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1.
NNSRM is an implementation of the structural risk minimization (SRM) principle using the nearest neighbor (NN) rule, and linear discriminant analysis (LDA) is a dimension-reducing method, which is usually used in classifications. This paper combines the two methods for face recognition. We first project the face images into a PCA subspace, then project the results into a much lower-dimensional LDA subspace, and then use an NNSRM classifier to recognize them in the LDA subspace. Experimental results demonstrate that the combined method can achieve a better performance than NN by selecting different distances and a comparable performance with SVM but costing less computational time.
Jiaxin Wang (Corresponding author)Email:

Danian Zheng   received his Bachelor degree in Computer Science and Technology in 2002 from Tsinghua University, Beijing, China. He received his Master degree and Doctoral degree in Computer Science and Technology in 2006 from Tsinghua University. He is currently a researcher in Fujitsu R&D Center Co. Ltd, Beijing, China. His research interests are mainly in the areas of support vector machines, kernel methods and their applications. Meng Na   received her Bachelor degree in Computer Science and Technology in 2003 from Northeastern, China. Since 2003 she has been pursuing the Master degree and the Doctoral degree at the Department of Computer Science and Technology at Tsinghua University. Her research interests are in the area of image processing, pattern recognition, and virtual human. Jiaxin Wang   received his Bachelor degree in Automatic Control in 1965 from Beijing University of Aeronautics and Astronautics, his Master degree in Computer Science and Technology in 1981 from Tsinghua University, Beijing, China, and his Doctoral degree in 1996 from Engineering Faculty of Vrije Universiteit Brussel, Belgium. He is currently a professor of Department of Computer Science and Technology, Tsinghua University. His research interests are in the areas of artificial intelligence, intelligent control and robotics, machine learning, pattern recognition, image processing and virtual reality.   相似文献   

2.
Due to the large data size of 3D MR brain images and the blurry boundary of the pathological tissues, tumor segmentation work is difficult. This paper introduces a discriminative classification algorithm for semi-automated segmentation of brain tumorous tissues. The classifier uses interactive hints to obtain models to classify normal and tumor tissues. A non-parametric Bayesian Gaussian random field in the semi-supervised mode is implemented. Our approach uses both labeled data and a subset of unlabeled data sampling from 2D/3D images for training the model. Fast algorithm is also developed. Experiments show that our approach produces satisfactory segmentation results comparing to the manually labeled results by experts.
Changshui ZhangEmail:

Yangqiu Song   received his B.S. degree from Department of Automation, Tsinghua University, China, in 2003. He is currently a Ph.D. candidate in Department of Automation, Tsinghua University. His research interests focus on machine learning and its applications. Changshui Zhang   received his B.S. degree in Mathematics from Peking University, China, in 1986, and Ph.D. degree from Department of Automation, Tsinghua University in 1992. He is currently a professor of Department of Automation, Tsinghua University. He is an Associate Editor of the journal Pattern Recognition. His interests include artificial intelligence, image processing, pattern recognition, machine learning, evolutionary computation and complex system analysis, etc. Jianguo Lee   received his B.S. degree from Department of Automatic Control, Huazhong University of Science and Technology (HUST), China, in 2001 and Ph.D. degree in Department of Automation, Tsinghua University in 2006. He is currently a researcher in Intel China Reasearch Center. His research interests focus on machine learning and its applications. Fei Wang   is a Ph.D. candidate from Department of Automation, Tsinghua University, Beijing, China. His main research interests include machine learning, data mining, and pattern recognition. Shiming Xiang   received his B.S. degree from Department of Mathematics of Chongqing Normal University, China, in 1993 and M.S. degree from Department of Mechanics and Mathematics of Chongqing University, China, in 1996 and Ph.D. degree from Institute of Computing Technology, Chinese Academy of Sciences, China, in 2004. He is currently a postdoctoral scholar in Department of Automation, Tsinghua University. His interests include computer vision, pattern recognition, machine learning, etc. Dan Zhang   received his B.S. degree in Electronic and Information Engineering from Nanjing University of Posts and Telecommunications in 2005. He is now a Master candidate from Department of Automation, Tsinghua University, Beijing, China. His research interests include pattern recognition, machine learning, and blind signal separation.   相似文献   

3.
Eigendecomposition-based techniques are popular for a number of computer vision problems, e.g., object and pose estimation, because they are purely appearance based and they require few on-line computations. Unfortunately, they also typically require an unobstructed view of the object whose pose is being detected. The presence of occlusion and background clutter precludes the use of the normalizations that are typically applied and significantly alters the appearance of the object under detection. This work presents an algorithm that is based on applying eigendecomposition to a quadtree representation of the image dataset used to describe the appearance of an object. This allows decisions concerning the pose of an object to be based on only those portions of the image in which the algorithm has determined that the object is not occluded. The accuracy and computational efficiency of the proposed approach is evaluated on 16 different objects with up to 50% of the object being occluded and on images of ships in a dockyard.
Anthony A. MaciejewskiEmail:

Chu-Yin Chang   received the B.S. degree in mechanical engineering from National Central University, Chung-Li, Taiwan, ROC, in 1988, the M.S. degree in electrical engineering from the University of California, Davis, in 1993, and the Ph.D. degree in electrical and computer engineering from Purdue University, West Lafayette, in 1999. From 1999--2002, he was a Machine Vision Systems Engineer with Semiconductor Technologies and Instruments, Inc., Plano, TX. He is currently the Vice President of Energid Technologies, Cambridge, MA, USA. His research interests include computer vision, computer graphics, and robotics. Anthony A. Maciejewski   received the BSEE, M.S., and Ph.D. degrees from Ohio State University in 1982, 1984, and 1987. From 1988 to 2001, he was a professor of Electrical and Computer Engineering at Purdue University, West Lafayette. He is currently the Department Head of Electrical and Computer Engineering at Colorado State University. He is a Fellow of the IEEE. A complete vita is available at: Venkataramanan Balakrishnan   is Professor and Associate Head of Electrical and Computer Engineering at Purdue University, West Lafayette, Indiana. He received the B.Tech degree in electronics and communication and the President of India Gold Medal from the Indian Institute of Technology, Madras, in 1985. He then attended Stanford University, where he received the M.S. degree in statistics and the Ph.D. degree in electrical engineering in 1992. He joined Purdue University in 1994 after post-doctoral research at Stanford, CalTech and the University of Maryland. His primary research interests are in convex optimization and large-scale numerical algebra, applied to engineering problems. Rodney G. Roberts   received B.S. degrees in Electrical Engineering and Mathematics from Rose-Hulman Institute of Technology in 1987 and an MSEE and Ph.D. in Electrical Engineering from Purdue University in 1988 and 1992, respectively. From 1992 until 1994, he was a National Research Council Fellow at Wright Patterson Air Force Base in Dayton, Ohio. Since 1994 he has been at the Florida A&M University---Florida State University College of Engineering where he is currently a Professor of Electrical and Computer Engineering. His research interests are in the areas of robotics and image processing. Kishor Saitwal   received the Bachelor of Engineering (B.E.) degree in Instrumentation and Controls from Vishwakarma Institute of Technology, Pune, India, in 1998. He was ranked Third in the Pune University and was recipient of National Talent Search scholarship. He received the M.S. and Ph.D. degrees from the Electrical and Computer Engineering department, Colorado State University, Fort Collins, in 2001 and 2006, respectively. He is currently with Behavioral Recognition Systems, Inc. performing research in computer aided video surveillance systems. His research interests include image/video processing, computer vision, and robotics.   相似文献   

4.
This paper focuses on human behavior recognition where the main problem is to bridge the semantic gap between the analogue observations of the real world and the symbolic world of human interpretation. For that, a fusion architecture based on the Transferable Belief Model framework is proposed and applied to action recognition of an athlete in video sequences of athletics meeting with moving camera. Relevant features are extracted from videos, based on both the camera motion analysis and the tracking of particular points on the athlete’s silhouette. Some models of interpretation are used to link the numerical features to the symbols to be recognized, which are running, jumping and falling actions. A Temporal Belief Filter is then used to improve the robustness of action recognition. The proposed approach demonstrates good performance when tested on real videos of athletics sports videos (high jumps, pole vaults, triple jumps and long jumps) acquired by a moving camera and different view angles. The proposed system is also compared to Bayesian Networks.
M. RombautEmail:

Emmanuel Ramasso   is currently pursuing a PhD at GIPSA-lab, Department of Images and Signal located in Grenoble, France. He received both his BS degree in Electrical Engineering and Control Theory and his MS degree in Computer Science in 2004 from Ecole Polytechnique de Savoie (Annecy, France). His research interests include Sequential Data Analysis, Transferable Belief Model, Fusion, Image and Videos Analysis and Human Motion Analysis. Costas Panagiotakis   was born in Heraklion, Crete, Greece in 1979. He received the BS and the MS degrees in Computer Science from University of Crete in 2001 and 2003, respectively. Currently, he is a PhD candidate in Computer Science at University of Crete. His research interests include computer vision, image and video analysis, motion analysis and synthesis, computer graphics, computational geometry and signal processing. Denis Pellerin   received the Engineering degree in Electrical Engineering in 1984 and the PhD degree in 1988 from the Institut National des Sciences Appliquées, Lyon, France. He is currently a full Professor at the Université Joseph Fourier, Grenoble, France. His research interests include visual perception, motion analysis in image sequences, video analysis, and indexing. Michèle Rombaut   is currently a full Professor at the Université Joseph Fourier, Grenoble, France. Her research interests include Data Fusion, Sequential Data Analysis, High Level Interpretation, Image and Video Analysis.   相似文献   

5.
The problem of clustering subpopulations on the basis of samples is considered within a statistical framework: a distribution for the variables is assumed for each subpopulation and the dissimilarity between any two populations is defined as the likelihood ratio statistic which compares the hypothesis that the two subpopulations differ in the parameter of their distributions to the hypothesis that they do not. A general algorithm for the construction of a hierarchical classification is described which has the important property of not having inversions in the dendrogram. The essential elements of the algorithm are specified for the case of well-known distributions (normal, multinomial and Poisson) and an outline of the general parametric case is also discussed. Several applications are discussed, the main one being a novel approach to dealing with massive data in the context of a two-step approach. After clustering the data in a reasonable number of ‘bins’ by a fast algorithm such as k-Means, we apply a version of our algorithm to the resulting bins. Multivariate normality for the means calculated on each bin is assumed: this is justified by the central limit theorem and the assumption that each bin contains a large number of units, an assumption generally justified when dealing with truly massive data such as currently found in modern data analysis. However, no assumption is made about the data generating distribution.
Antonio CiampiEmail:

Antonio Ciampi   received his M.Sc. and Ph.D. degrees from Queen's University, Kingston, Ontario, Canada in 1973. He taught at the University of Zambia from 1973 to 1977. Returning to Canada he worked as statitician in the Treasury of the Ontario Government. From 1978 to 1985, he was Senior Scientist in the Ontario Cancer Institute, Toronto, and taught at the University of Toronto. In 1985 he moved to Montreal where he is Associate Professor in the Department of Epidemiology, Biostatistics and Occupational Health, McGill University. He has also been Senior Scientist of the Montreal Children's Hospital Research Instititue, in the Montreal Heart Institute and in the St. Mary's Hospital Community Health Research Unit. His research interest include Statistical Learning, Data Mining and Statistical Modeling. Yves Lechevallier   In 1976 he joined the INRIA where he was engaged in the project of Clustering and Pattern Recognition. Since 1988 he has been teaching Clustering, Neural Network and Data Mining at the University of PARIS-IX, CNAM and ENSAE. He specializes in Mathematical Statistics, Applied Statistics, Data Analysis and Classification. Current Research Interests: (1) Clustering algorithm (Dynamic Clustering Method, Kohonen Maps, Divisive Clustering Method); (2) Discrimination Problems and Decision Tree Methods; Build an efficient Neural Network by Classification Tree. Manuel Castejón Limas   received his engineering degree from the Universidad de Oviedo in 1999 and his Ph.D. degree from the Universidad de La Rioja in 2004. From 2002 he teaches project management at the Universidad de Leon. His research is oriented towards the development of data analysis procedures that may aid project managers on their decision making processes. Ana González Marcos   received her M.Sc. and Ph.D. degrees from the University of La Rioja, Spain. In 2003, she joined the University of León, Spain, where she works as a Lecturer in the Department of Mechanical, Informatic and Aerospace Engineering. Her research interests include the application of multivariate analysis and artificial intelligence techniques in order to improve the quality of industrial processes.   相似文献   

6.
We argue that in order to understand which features are used by humans to group textures, one must start by computing thousands of features of diverse nature, and select from those features those that allow the reproduction of perceptual groups or perceptual ranking created by humans. We use the Trace transform to produce such features here. We compare these features with those produced from the co-occurrence matrix and its variations. We show that when one is not interested in reproducing human behaviour, the elements of the co-occurrence matrix used as features perform best in terms of texture classification accuracy. However, these features cannot be “trained” or “selected” to imitate human ranking, while the features produced from the Trace transform can. We attribute this to the diverse nature of the features computed from the Trace transform.
Maria PetrouEmail:

Maria Petrou   studied Physics at the Aristotle University of Thessaloniki, Greece, Applied Mathematics in Cambridge and she did her Ph.D. in the Institute of Astronomy in Cambridge, UK. She is currently the Professor of Signal Processing and the Head of the Communications and Signal Processing Group at Imperial College. She has published more than 300 scientific papers, on Astronomy, Remote Sensing, Computer Vision, Machine Learning, Colour analysis, Industrial Inspection, and Medical Signal and Image Processing. She has co-authored two books “Image Processing: the fundamentals” and “Image Processing: Dealing with texture” both published by John Wiley in 1999 and 2006, respectively. She is a Fellow of the Royal Academy of Engineering, Fellow of IEE, Fellow of IAPR, Senior member of IEEE and a Distinguished Fellow of the British Machine Vision Association. Alireza Talebpour   worked for several years in the private sector after his first degree in Electrical Engineering in Iran. He obtained his Ph.D. in image processing from Surrey University in 2004, and since then he has been a lecturer at Shahid Beheshti University in Iran. His research interests are in multimedia and signal and image processing. Alexander Kadyrov   obtained his Ph.D. in Mathematics, in 1983 from St Petersburg University. From 1979 to 1997 he held various research and teaching positions at Penza State University, Russia. He started working on computer vision in 1998. He has authored or co-authored about 60 papers, textbooks and inventions.   相似文献   

7.
A serial multi-stage classification system for facing the problem of intrusion detection in computer networks is proposed. The whole decision process is organized into successive stages, each one using a set of features tailored for recognizing a specific attack category. All the stages employ suitable criteria for estimating the reliability of the performed classification, so that, in case of uncertainty, information related to a possible attack are only logged for further processing, without raising an alert for the system manager. This permits to reduce the number of false alarms. On the other hand, in order to keep low the number of missed detections, the proposed system declares a connection as normal traffic only if all the stages do not detect an attack. The proposed multi-stage intrusion detection system has been tested on three different services (http, telnet and ftp) of a standard database used for benchmarking intrusion detection systems and also on real network traffic data. The experimental analysis highlights the effectiveness of the approach: the proposed system behaves significantly better than other multiple classifier systems performing classification in a single stage.
Carlo Sansone (Corresponding author)Email:

Luigi Pietro Cordella   is a Professor of Computer Science at the Faculty of Engineering of the University of Naples “Federico II” (Italy). He has been Chairman of the Department of Computer Science and Systems and, since 1994, Chairman of the Ph.D. course program in Information Engineering of the University of Naples. His present research interests include Syntactic and Structural Pattern Recognition, Shape Analysis, Document Recognition, OCR, Neural Networks, and Evolutionary Computation. He has published over 150 papers and is editor or co-editor of six books. He is a Fellow of IAPR and a member of IEEE and Computer Society. He has been President of GIRPR (2000–2004), the Italian Association for Pattern Recognition, and member of the Governing Board of the IAPR. Carlo Sansone   is Associate Professor of Computer Science at the Faculty of Engineering of the University of Naples “Federico II” (Italy). His research principally focuses on classification techniques, exact and inexact graph matching and multiple-classifier systems theory and applications. He coordinated several projects in the areas of car plate recognition, biomedical images interpretation and network intrusion detection. Prof. Sansone has authored about 90 research papers in international journals and conference proceedings. He serves as referee for many relevant journals in the field of Pattern Recognition and is Associate editor of the Electronic Letters on Computer Vision and Image Analysis journal. He is currently co-editor of a special issue on “Information Fusion in Computer Security” for the Information Fusion journal.   相似文献   

8.
Emphysema is a common chronic respiratory disorder characterised by the destruction of lung tissue. It is a progressive disease where the early stages are characterised by a diffuse appearance of small air spaces, and later stages exhibit large air spaces called bullae. A bullous region is a sharply demarcated region of emphysema. In this paper, it is shown that an automated texture-based system based on co-training is capable of achieving multiple levels of emphysema extraction in high-resolution computed tomography (HRCT) images. Co-training is a semi-supervised technique used to improve classifiers that are trained with very few labelled examples using a large pool of unseen examples over two disjoint feature sets called views. It is also shown that examples labelled by experts can be incorporated within the system in an incremental manner. The results are also compared against “density mask”, currently a standard approach used for emphysema detection in medical image analysis and other computerized techniques used for classification of emphysema in the literature. The new system can classify diffuse regions of emphysema starting from a bullous setting. The classifiers built at different iterations also appear to show an interesting correlation with different levels of emphysema, which deserves more exploration.
Mithun Prasad (Corresponding author)Email:
Arcot SowmyaEmail:
Peter WilsonEmail:

Mithun Prasad   received his PhD from the University of New South Wales, Sydney, Australia in 2006. He was a postdoctoral scholar at the University of California, Los Angeles and now a research associate at Rensselaer Polytechnic Institute, NY. His research interests are computer aided diagnosis, cell and tissue image analysis. Arcot Sowmya   is a Professor, School of Computer Science and Engineering, UNSW, Sydney. She holds a PhD degree in Computer Science from Indian Institute of Technology, Bombay, besides other degrees in Mathematics and Computer Science. Her areas of research include learning in vision as well as embedded system design. Her research has been applied to extraction of linear features in remotely sensed images as well as feature extraction, recognition and computer aided diagnosis in medical images. Peter Wilson   is a clinical Radiologist at Pittwater Radiology in Sydney. He was trained at Royal North Shore Hospital and taught Body Imaging at the University of Rochester, NY, prior to taking up his current position.   相似文献   

9.
In this paper a novel scheme for color video compression using color transfer technique is proposed. Towards this, a new color transfer mechanism for video using motion estimation is presented. Encoder and decoder architectures for the proposed compression scheme are also presented. In this scheme, compression is achieved by firstly discarding chrominance information for all but selected reference frames and then using motion prediction and discrete cosine transform (DCT) based quantization. At decompression stage, the luminance-only frames are colored using chrominance information from the reference frames applying the proposed color transfer technique. To integrate color transfer mechanism with hybrid compression scheme a new color transfer protocol is defined. Both compression scheme and color transfer work in YCbCr color space.
Ritwik KumarEmail:

Ritwik Kumar   received his B.Tech. degree in Information and Communication Technology from Dhirubhai Ambani Institute of Information and Communication Technology, Gandhinagar, India in 2005. Since 2005 he has been a Ph.D. student at the Center for Vision, Graphics and Medical Imaging at the Department of Computer and Information Science and Engineering at the University of Florida, Gainesville, FL, USA. His research interests include machine learning, color video processing and face recognition Suman K. Mitra   is an Assistant Professor at the Dhirubhai Ambani Institute of Information and Communication Technology, Gandhinagar, India. Dr. Mitra obtained his Ph.D. from the Indian Statistical Institute. Earlier, Dr. Mitra was with the Institute of Neural Computation at the University of California, San Diego, USA as a post-graduate researcher and with the Department of Mathematics at the Indian Institute of Technology, Bombay as an assistant professor. Dr. Mitra’s research interest includes image processing, pattern recognition, Bayesian networks and digital watermarking. Currently, Dr. Mitra is serving International Journal of Image and Graphics (IJIG) as an Associate Editor. Dr. Mitra is a life member of ISCA and a member of IEEE, and IUPRAI   相似文献   

10.
Optimizing two-pass connected-component labeling algorithms   总被引:5,自引:0,他引:5  
We present two optimization strategies to improve connected-component labeling algorithms. Taking together, they form an efficient two-pass labeling algorithm that is fast and theoretically optimal. The first optimization strategy reduces the number of neighboring pixels accessed through the use of a decision tree, and the second one streamlines the union-find algorithms used to track equivalent labels. We show that the first strategy reduces the average number of neighbors accessed by a factor of about 2. We prove our streamlined union-find algorithms have the same theoretical optimality as the more sophisticated ones in literature. This result generalizes an earlier one on using union-find in labeling algorithms by Fiorio and Gustedt (Theor Comput Sci 154(2):165–181, 1996). In tests, the new union-find algorithms improve a labeling algorithm by a factor of 4 or more. Through analyses and experiments, we demonstrate that our new two-pass labeling algorithm scales linearly with the number of pixels in the image, which is optimal in computational complexity theory. Furthermore, the new labeling algorithm outperforms the published labeling algorithms irrespective of test platforms. In comparing with the fastest known labeling algorithm for two-dimensional (2D) binary images called contour tracing algorithm, our new labeling algorithm is up to ten times faster than the contour tracing program distributed by the original authors.
Kenji SuzukiEmail:

Kesheng Wu   is a staff computer scientist at Lawrence Berkeley National Laboratory. His work primarily involves data management, data analyses and scientific computing. He is the lead developer of FastBit bitmap indexing software for searching over large datasets. He also led the development of a software package call TRLan, which computes eigenvalues of large symmetric matrices on parallel machines. He received a Ph.D. in computer science from the University of Minnesota, an M.S. in physics from the University of Wisconsin-Milwaukee, and a B.S. in physics from Nanjing University, China. His homepage on the web is . Ekow Otoo   holds a B.Sc. degree in Electrical Engineering from the University of Science and Technology, Kumasi, Ghana, and a Ph.D. degree in Computer Science from McGill University, Montreal, Canada. From 1987 to 1999, he was a tenured faculty at Carleton University, Ottawa, Canada. He has served as a consultant to Bell Northern Research, and the GIS Division, Geomatics Canada. He is presently a consultant with Mathematical Sciences Research Institute, Ghana, and a staff scientist/engineer, LBNL, Berkeley. He is a member of the ACM and IEEE. His research interests include database management, data structures, algorithms, parallel and distributed computing. Kenji Suzuki   received his Ph.D. degree from Nagoya University in 2001. In 2001, he joined Department of Radiology at University of Chicago. Since 2006, he has been Assistant Professor of Radiology, Medical Physics, and Cancer Research Center. His research interests include computer-aided diagnosis, machine learning, and pattern recognition. He published 110 papers including 45 journal papers. He has served as an associate editor for three journals and a referee for 17 journals. He received Paul Hodges Award, RSNA Certificate of Merit Awards, Cancer Research Foundation Young Investigator Award, and SPIE Honorable Mention Award. He is a Senior Member of IEEE.   相似文献   

11.
Texture classification is an important problem in image analysis. In the present study, an efficient strategy for classifying texture images is introduced and examined within a distributional-statistical framework. Our approach incorporates the multivariate Wald–Wolfowitz test (WW-test), a non-parametric statistical test that measures the similarity between two different sets of multivariate data, which is utilized here for comparing texture distributions. By summarizing the texture information using standard feature extraction methodologies, the similarity measure provides a comprehensive estimate of the match between different images based on graph theory. The proposed “distributional metric” is shown to handle efficiently the texture-space dimensionality and the limited sample size drawn from a given image. The experimental results, from the application on a typical texture database, clearly demonstrate the effectiveness of our approach and its superiority over other well-established texture distribution (dis)similarity metrics. In addition, its performance is used to evaluate several approaches for texture representation. Even though the classification results are obtained on grayscale images, a direct extension to color-based ones can be straightforward.
George EconomouEmail:

Vasileios K. Pothos   received the B.Sc. degree in Physics in 2004 and the M.Sc. degree in Electronics and Information Processing in 2006, both from the University of Patras (UoP), Greece. He is currently a Ph.D. candidate in image processing at the Electronics Laboratory in the Department of Physics, UoP, Greece. His main research interests include image processing, pattern recognition and multimedia databases. Dr. Christos Theoharatos   received the B.Sc. degree in Physics in 1998, the M.Sc. degree in Electronics and Computer Science in 2001 and the Ph.D. degree in Image Processing and Multimedia Retrieval in 2006, all from the University of Patras (UoP), Greece. He has actively participated in several national research projects and is currently working as a PostDoc researcher at the Electronics Laboratory (ELLAB), Electronics and Computer Division, Department of Physics, UoP. Since the academic year 2002, he has been working as tutor at the degree of lecturer in the Department of Electrical Engineering, of the Technological Institute of Patras. His main research interests include pattern recognition, multimedia databases, image processing and computer vision, data mining and graph theory. Prof. Evangelos Zygouris   received the B.Sc. degree in Physics in 1971 and the Ph.D. degree in Digital Filters and Microprocessors in 1984, both from the University of Patras (UoP), Greece. He is currently an Associate Professor at Electronics Laboratory (ELLAB), Department of Physics, UoP, where he teaches at both undergraduate and postgraduate level. He has published papers on digital signal and image processing, digital system design, speech coding systems and real-time processing. His main research interests include digital signal and image processing, DSP system design, micro-controllers, micro-processors and DSPs using VHDL. Prof. George Economou   received the B.Sc. degree in Physics from the University of Patras (UoP), Greece in 1976, the M.Sc. degree in Microwaves and Modern Optics from University College London in 1978 and the Ph.D. degree in Fiber Optic Sensor Systems from the University of Patras in 1989. He is currently an Associate Professor at Electronics Laboratory (ELLAB), Department of Physics, UoP, where he teaches at both undergraduate and postgraduate level. He has published papers on non-linear signal and image processing, fuzzy image processing, multimedia databases, data mining and fiber optic sensors. He has also served as referee for many journals, conferences and workshops. His main research interests include signal and image processing, computer vision, pattern recognition and optical signal processing.   相似文献   

12.
The aspect Bernoulli model: multiple causes of presences and absences   总被引:1,自引:0,他引:1  
We present a probabilistic multiple cause model for the analysis of binary (0–1) data. A distinctive feature of the aspect Bernoulli (AB) model is its ability to automatically detect and distinguish between “true absences” and “false absences” (both of which are coded as 0 in the data), and similarly, between “true presences” and “false presences” (both of which are coded as 1). This is accomplished by specific additive noise components which explicitly account for such non-content bearing causes. The AB model is thus suitable for noise removal and data explanatory purposes, including omission/addition detection. An important application of AB that we demonstrate is data-driven reasoning about palaeontological recordings. Additionally, results on recovering corrupted handwritten digit images and expanding short text documents are also given, and comparisons to other methods are demonstrated and discussed.
Mikael ForteliusEmail:

Ella Bingham   received her M.Sc. degree in Engineering Physics and Mathematics at Helsinki University of Technology in 1998, and her Dr.Sc. degree in Computer Science at Helsinki University of Technology in 2003. She is currently at Helsinki Institute for Information Technology, located at the University of Helsinki. Her research interests include statistical data analysis and machine learning. Ata Kabán   is a lecturer in the School of Computer Science of the University of Birmingham, since 2003. She holds a B.Sc. degree in computer science (1999) from the University “Babes-Bolya” of Cluj-Napoca, Romania, and a Ph.D. in computer science (2001) from the University of Paisley, UK. Her current research interests concern statistical machine learning and data mining. Prior to her career in computer science, she obtained a B.A. degree in musical composition (1994) and the M.A. (1995) and Ph.D. (1999) degrees in musicology from the Music Academy “Gh. Dima” of Cluj-Napoca, Romania. Mikael Fortelius   is a palaeontologist with special interest in plant-eating mammals of the Cenozoic, especially ungulates and their relationship with habitat and climate change (the Ungulate Condition). Mikael is Professor of Evolutionary Palaeontology in the Department of Geology and Group Leader in the Institute of Biotechnology (BI), University of Helsinki. Since 1992, he has been engaged in developing a database of Neogene Old World Mammals (). The NOW database is maintained at the Finnish Museum of Natural History and developed in collaboration with an extensive Advisory Board; data access and downloading are entirely public.   相似文献   

13.
Traditional pattern recognition (PR) systems work with the model that the object to be recognized is characterized by a set of features, which are treated as the inputs. In this paper, we propose a new model for PR, namely one that involves chaotic neural networks (CNNs). To achieve this, we enhance the basic model proposed by Adachi (Neural Netw 10:83–98, 1997), referred to as Adachi’s Neural Network (AdNN), which though dynamic, is not chaotic. We demonstrate that by decreasing the multiplicity of the eigenvalues of the AdNN’s control system, we can effectively drive the system into chaos. We prove this result here by eigenvalue computations and the evaluation of the Lyapunov exponent. With this premise, we then show that such a Modified AdNN (M-AdNN) has the desirable property that it recognizes various input patterns. The way that this PR is achieved is by the system essentially sympathetically “resonating” with a finite periodicity whenever these samples (or their reasonable resemblances) are presented. In this paper, we analyze the M-AdNN for its periodicity, stability and the length of the transient phase of the retrieval process. The M-AdNN has been tested for Adachi’s dataset and for a real-life PR problem involving numerals. We believe that this research also opens a host of new research avenues. Research partially supported by the Natural Sciences and Engineering Research Council of Canada.
Dragos Calitoiu (Corresponding author)Email:
B. John OommenEmail:
Doron NussbaumEmail:

Dragos Calitoiu   was born in Iasi, Romania on May 7, 1968. He obtained his Electronics degree in 1993 from the Polytechnical University of Bucharest, Romania, and the Ph. D. degree in 2006, from Carleton University, in Ottawa, Canada. He is currently a Postdoctoral Fellow with the Health Policy Research Division of Health Canada. His research interests include Pattern Recognition, Machine Learning, Learning Automata, Chaos Theory and Computational Neuroscience. B. John Oommen   was born in Coonoor, India on September 9, 1953. He obtained his B. Tech. degree from the Indian Institute of Technology, Madras, India in 1975. He obtained his M. E. from the Indian Institute of Science in Bangalore, India in 1977. He then went on for his M. S. and Ph. D. which he obtained from Purdue University, in West Lafayettte, Indiana in 1979 and 1982, respectively. He joined the School of Computer Science at Carleton University in Ottawa, Canada, in the 1981–1982 academic year. He is still at Carleton and holds the rank of a Full Professor. His research interests include Automata Learning, Adaptive Data Structures, Statistical and Syntactic Pattern Recognition, Stochastic Algorithms and Partitioning Algorithms. He is the author of more than 260 refereed journal and conference publications and is a Fellow of the IEEE and a Fellow of the IAPR. Dr. Oommen is on the Editorial Board of the IEEE Transactions on Systems, Man and Cybernetics, and Pattern Recognition. Doron Nussbaum   received his B.Sc. degree in mathematics and computer science from the University of Tel-Aviv, Israel in 1985, and the M. C. S. and Ph. D. degrees in computer science from Carleton University, Ottawa, Canada in 1988 and 2001, respectively. From 1988 to 1991 he worked for Tydac Technologies as a Manager of Research and Development. His work at Tydac focused on the development of a geographical information system. From 1991 to 1994, he worked for Theratronics as senior software consultant where he worked on the company’s cancer treatment planning software (Theraplan). From 1998 to 2001 he worked for SHL Systemshouse as a senior technical architect. In 2001 he joined the School of Computer Science at Carleton University as an Associate Professor. Dr. Nussbaum’s main research interests are medical computing, computational geometry, robotics and algorithms design.   相似文献   

14.
Quantitatively measuring object-oriented couplings   总被引:1,自引:0,他引:1  
One key to several quality factors of software is the way components are connected. Software coupling can be used to estimate a number of quality factors, including maintainability, complexity, and reliability. Object-oriented languages are designed to reduce the number of dependencies among classes, which encourages separation of concerns and should reduce the amount of coupling. At the same time, the object-oriented language features change the way the connections are made, how they must be analyzed, and how they are measured. This paper discusses software couplings based on object-oriented relationships between classes, specifically focusing on types of couplings that are not available until after the implementation is completed, and presents a static analysis tool that measures couplings among classes in Java packages. Data from evaluating the tool on several open-source projects are provided. The coupling measurement is based on source code, which has the advantage of being quantitative and more precise than previous measures, but the disadvantage of not being available before implementation, and thus not useful for some predictive efforts.
Stephen R. SchachEmail:

Jeff Offutt   is Professor of Software Engineering at George Mason University. His current research interests include software testing, analysis of Web applications, object-oriented software, and software maintenance. He has published over 100 refereed research papers and the textbook Introduction to Software Testing (Campbridge University Press, 2008). Offutt is the editor-in-chief of Wiley’s Software Testing, Verification and Reliability journal, and on editorial boards for EmSE, SoSyM, and SQJ. He received the Best Teacher Award from the School of Information Technology and Engineering in 2003. Offutt received a PhD degree from the Georgia Institute of Technology. Aynur Abdurazik   received the BEng degree in Computer Engineering from Beijing University of Posts and Telecommunications, Beijing, China, the MS degree in Software Engineering from George Mason University, and the PhD degree in Computer Science from George Mason University. Her research interests are in the area of software engineering, including object-oriented software analysis and testing. Stephen R. Schach   is an Associate Professor in the Department of Electrical Engineering and Computer Science at Vanderbilt University, Nashville, Tennessee. Steve is the author of over 130 refereed research papers. He has written 12 software engineering textbooks, including Object-Oriented and Classical Software Engineering, Seventh Edition (McGraw-Hill, 2007). He consults internationally on software engineering topics. Steve’s research interests are in empirical software engineering and open-source software engineering. He obtained his PhD from the University of Cape Town.   相似文献   

15.
Map matching algorithms are utilised to support the navigation module of advanced transport telematics systems. The objective of this paper is to develop a framework to quantify the effects of spatial road network data and navigation sensor data on the performance of map matching algorithms. Three map matching algorithms are tested with different spatial road network data (map scale 1:1,250; 1:2,500 and 1:50,000) and navigation sensor data (global positioning system (GPS) and GPS augmented with deduced reckoning) in order to quantify their performance. The algorithms are applied to different road networks of varying complexity. The performance of the algorithms is then assessed for a suburban road network using high precision positioning data obtained from GPS carrier phase observables. The results show that there are considerable effects of spatial road network data on the performance of map matching algorithms. For an urban road network, the results suggest that both the quality of spatial road network data and the type of navigation system affect the link identification performance of map matching algorithms.
Robert B. NolandEmail:

Dr. Mohammed Quddus   obtained a PhD from Imperial College London in 2005 where he was working as a research assistant for four years and a research fellow for one year on a number of research projects. He received an MEng degree in Civil Engineering from the National University of Singapore in 2001 and a BSc in Civil Engineering from BUET (Bangladesh University of Engineering and Technology) in 1998. He joined Loughborough University as a lecturer in transport studies in 2006.
Dr. Robert Noland   is Reader in Transport and Environmental Policy and heads the Environment and Policy Research Group within the Centre for Transport Studies. He received his PhD at the University of Pennsylvania in Energy Management and Environmental Policy. Prior to joining Imperial College he was a Policy Analyst at the US Environmental Protection Agency and also conducted post-doctoral research in the Economics Department at the University of California at Irvine.
Prof Washington Ochieng   is Professor of Positioning and Navigation Systems at the Centre for Transport Studies (CTS) in the Department of Civil and Environmental Engineering at Imperial College London. He is also the Director of the Departmental MSc Programmes and the Imperial College Engineering Geomatics Group (ICEGG). Dr. Ochieng is a Fellow of the Royal Institute of Navigation (FRIN) and the Institution of Civil Engineering Surveyors (FInstCES). He is a Member of Council and Trustee of the Royal Institute of Navigation, Member of the Institution of Civil Engineers (MICE), the Institution of Highways and Transportation (MIHT), and the United States Institute of Navigation.
  相似文献   

16.
Fault based testing aims at detecting hypothesized faults based on specifications or program source. There are some fault based techniques for testing Boolean expressions which are commonly used to model conditions in specifications as well as logical decisions in program source. The MUMCUT strategy has been proposed to generate test cases from Boolean expressions. Moreover, it detects eight common types of hypothesized faults provided that the original expression is in irredundant disjunctive normal form, IDNF. Software practitioners are more likely to write the conditions and logical decisions in general form rather than IDNF. Hence, it is interesting to investigate the fault detecting capability of the MUMCUT strategy with respect to general form Boolean expressions. In this article, we perform empirical studies to investigate the fault detection capability of the MUMCUT strategy with respect to general form Boolean expressions as well as mutated expressions. A mutated expression can be obtained from the original given Boolean expression by making a syntactic change based on a particular type of fault.
M. F. LauEmail:

T. Y. Chen   obtained his BSc and MPhil from the University of Hong Kong, MSc and DIC from the Imperial College of Science and Technology, PhD from the University of Melbourne. He is currently a Professor of Software Engineering at the Swinburne University of Technology. Prior to joining Swinburne, he has taught at the University of Hong Kong and the University of Melbourne. His research interests include software testing, debugging, maintenance, and validation of requirements. M. F. Lau   received the Ph.D. degree in Software Engineering from the University of Melbourne, Australia. He is currently a Senior Lecturer in the Faculty of Information and Communication Technologies, Swinburne University of Technology, Australia. His research publications have appeared in various scholarly journals, including ACM Transactions on Software Engineering and Methodology, The Journal of Systems and Software, The Computer Journal, Software Testing, Verification and Reliability, Information and Software Technology, Information Sciences, and Information Processing Letters. His research interests include software testing, software quality, software specification and computers in education. K. Y. Sim   received his Bachelor of Engineering in Electrical, Electronics and Systems from the National University of Malaysia in 1999 and the Master of Computer Science from the University of Malaya, Malaysia in 2001. Currently, he is a Senior Lecturer in the School of Engineering, Swinburne University of Technology, Sarawak Campus, Malaysia. His current research interests include software testing and information security. C. A. Sun   received the PhD degree in Computer Software and Theory in 2002 from Beijing University of Aeronautics and Astronautics, China; the bachelor degree in Computer and Its application in 1997 from University of Science and Technology Beijing, China. He is currently an Assistant Professor in the School of Computer and Information Technology, Beijing Jiaotong University, China. His research areas are software testing, software architecture and service-oriented computing. He has published about 40 referred papers in the above areas. He is an IEEE member.   相似文献   

17.
In this paper, new measures—called clustering performance measures (CPMs)—for assessing the reliability of a clustering algorithm are proposed. These CPMs are defined using a validation measure, which determines how well the algorithm works with a given set of parameter values, and a repeatability measure, which is used for studying the stability of the clustering solutions and has the ability to estimate the correct number of clusters in a dataset. These proposed CPMs can be used to evaluate clustering algorithms that have a structure bias to certain types of data distribution as well as those that have no structure biases. Additionally, we propose a novel cluster validity index, V I index, which is able to handle non-spherical clusters. Five clustering algorithms on different types of real-world data and synthetic data are evaluated. The first dataset type refers to a communications signal dataset representing one modulation scheme under a variety of noise conditions, the second represents two breast cancer datasets, while the third type represents different synthetic datasets with arbitrarily shaped clusters. Additionally, comparisons with other methods for estimating the number of clusters indicate the applicability and reliability of the proposed cluster validity V I index and repeatability measure for correct estimation of the number of clusters.
Asoke K. NandiEmail:

Sameh A. Salem   graduated with a BSc degree in Communications and Electronics Engineering and an MSc in Communications and Electronics Engineering, both from Helwan University, Cairo, Egypt, in May 1998 and October 2003, respectively. He is currently pursuing PhD degree in the Signal Processing and Communications Group, Department of Electrical Engineering and Electronics, The University of Liverpool, UK. His research interests include clustering algorithms, machine learning, and parallel computing. Asoke K. Nandi   received PhD degree from the University of Cambridge (Trinity College), Cambridge, UK, in 1979. He held several research positions in Rutherford Appleton Laboratory (UK), European Organisation for Nuclear Research (Switzerland), Department of Physics, Queen Mary College (London, UK) and Department of Nuclear Physics (Oxford, UK). In 1987, he joined the Imperial College, London, UK, as the Solartron Lecturer in the Signal Processing Section of the Electrical Engineering Department. In 1991, he joined the Signal Processing Division of the Electronic and Electrical Engineering Department in the University of Strathclyde, Glasgow, UK, as a Senior Lecturer; subsequently, he was appointed as a Reader in 1995 and a Professor in 1998. In March 1999, he moved to the University of Liverpool, Liverpool, UK to take up his appointment with David Jardine, Chair of Signal Processing in the Department of Electrical Engineering and Electronics. In 1983, he was a member of the UA1 team at CERN that discovered the three fundamental particles known as W+, W and Z0 providing the evidence for the unification of the electromagnetic and weak forces, which was recognised by the Nobel Committee for Physics in 1984. Currently, he is the Head of the Signal Processing and Communications Research Group with interests in the areas of non-Gaussian signal processing, communications, and machine learning research. With his group he has been carrying out research in machine condition monitoring, signal modelling, system identification, communication signal processing, biomedical signals, ultrasonics, blind source separation, and blind deconvolution. He has authored or co-authored over 350 technical publications, including two books “Automatic Modulation Recognition of Communications Signals” (Kluwer Academic, Boston, MA, 1996) and “Blind Estimation Using Higher-Order Statistics” (Kluwer Academic, Boston, MA, 1999) and over 140 journal papers. Professor Nandi was awarded the Mounbatten Premium, Division Award of the Electronics and Communications Division, of the Institution of Electrical Engineers of the UK in 1998 and the Water Arbitration Prize of the Institution of Mechanical Engineers of the UK in 1999. He is a Fellow of the Cambridge Philosophical Society, the Institution of Engineering and Technology, the Institute of Mathematics and its applications, the Institute of Physics, the Royal Society for Arts, the Institution of Mechanical Engineers, and the British Computer Society.   相似文献   

18.
The usefulness of measures for the analysis and design of object oriented (OO) software is increasingly being recognized in the field of software engineering research. In particular, recognition of the need for early indicators of external quality attributes is increasing. We investigate through experimentation whether a collection of UML class diagram measures could be good predictors of two main subcharacteristics of the maintainability of class diagrams: understandability and modifiability. Results obtained from a controlled experiment and a replica support the idea that useful prediction models for class diagrams understandability and modifiability can be built on the basis of early measures, in particular, measures that capture structural complexity through associations and generalizations. Moreover, these measures seem to be correlated with the subjective perception of the subjects about the complexity of the diagrams. This fact shows, to some extent, that the objective measures capture the same aspects as the subjective ones. However, despite our encouraging findings, further empirical studies, especially using data taken from real projects performed in industrial settings, are needed. Such further study will yield a comprehensive body of knowledge and experience about building prediction models for understandability and modifiability.
Mario PiattiniEmail:

Marcela Genero   is an Associate Professor in the Department of Information Systems and Technologies at the University of Castilla-La Mancha, Ciudad Real, Spain. She received her MSc degree in Computer Science from the University of South, Argentine in 1989, and her PhD at the University of Castilla-La Mancha, Ciudad Real, Spain in 2002. Her research interests include empirical software engineering, software metrics, conceptual data models quality, database quality, quality in product lines, quality in MDD, etc. She has published in prestigious journals (Journal of Software Maintenance and Evolution: Research and Practice, L’Objet, Data and Knowledge Engineering, Journal of Object Technology, Journal of Research and Practice in Information Technology), and conferences (CAISE, E/R, MODELS/UML, ISESE, OOIS, SEKE, etc). She edited the books of Mario Piattini and Coral Calero titled “Data and Information Quality” (Kluwer, 2001), and “Metrics for Software Conceptual Models” (Imperial College, 2005). She is a member of ISERN. M. Esperanza Manso   is an Associate Professor in the Department of Computer Language and Systems at the University of Valladolid, Valladolid, Spain. She received her MSc degree in Mathematics from the University of Valladolid. Currently, she is working towards her PhD. Her main research interests are software maintenance, reengineering and reuse experimentation. She is an author of several papers in conferences (OOIS, CAISE, METRICS, ISESE, etc.) and book chapters. Corrado Aaron Visaggio   is an Assistant Professor of Database and Software Testing at the University of Sannio, Italy. He obtained his PhD in Software Engineering at the University of Sannio. He works as a researcher at the Research Centre on Software Technology, at Benvento, Italy. His research interests include empirical software engineering, software security, software process models. He serves on the Editorial Board on the e-Informatica Journal. Gerardo Canfora   is a Full Professor of Computer Science at the Faculty of Engineering and the Director of the Research Centre on Software Technology (RCOST) at the University of Sannio in Benevento, Italy. He serves on the program committees of a number of international conferences. He was a program co-chair of the 1997 International Workshop on Program Comprehension; the 2001 International Conference on Software Maintenance; the 2003 European Conference on Software Maintenance and Reengineering; the 2005 International Workshop on Principles of Software Evolution: He was the General chair of the 2003 European Conference on Software Maintenance and Reengineering and 2006 Working Conference on Reverse Engineering. Currently, he is a program co-chair of the 2007 International Conference on Software Maintenance. His research interests include software maintenance and reverse engineering, service oriented software engineering, and experimental software engineering. He was an associate editor of IEEE Transactions on Software Engineering and he currently serves on the Editorial Board of the Journal of Software Maintenance and Evolution. He is a member of the IEEE Computer Society. Mario Piattini   is MSc and PhD in Computer Science by the Technical University of Madrid. Certified Information System Auditor by ISACA (Information System Audit and Control Association). Full Professor in the Department of Information Systems and Technologies at the University of Castilla-La Mancha, in Ciudad Real, Spain. Author of several books and papers on databases, software engineering and information systems. He leads the ALARCOS research group at the University of Castilla-La Mancha.   相似文献   

19.
Advances in GML for Geospatial Applications   总被引:1,自引:0,他引:1  
This paper presents a study of Geography Markup Language (GML), the issues that arise from using GML for spatial applications, including storage, parsing, querying and visualization, as well as the use of GML for mobile devices and web services. GML is a modeling language developed by the Open Geospatial Consortium (OGC) as a medium of uniform geographic data storage and exchange among diverse applications. Many new XML-based languages are being developed as open standards in various areas of application. It would be beneficial to integrate such languages with GML during the developmental stages, taking full advantage of a non-proprietary universal standard. As GML is a relatively new language still in development, data processing techniques need to be refined further in order for GML to become a more efficient medium for geospatial applications.
Yufeng KouEmail:

Chang-Tien(C.T.) Lu   received the BS degree in Computer Science and Engineering from the Tatung Institute of Technology, Taipei, Taiwan, in 1991, the MS degree in Computer Science from the Georgia Institute of Technology, Atlanta, GA, in 1996, and the Ph.D. degree in Computer Science from the University of Minnesota, Minneapolis, MN, in 2001. He is currently an assistant professor in the Department of Computer Science at Virginia Polytechnic Institute and State University, and is the founding director of the Spatial Data Management Laboratory. His research interests include spatial database, data mining, data warehousing, geographic information systems, and intelligent transportation systems. Dr. Lu is also affiliated with Virginia Tech Civil and Environmental Engineering Department, Center for Geospatial Information Technology, and Virginia Tech Transportation Institute. Raimundo Dos Santos   received a Bachelor’s Degree in Computer Science from the University of South Florida. He is currently a PhD. candidate in the Department of Computer Science at Virginia Polytechnic Institute and State University. His research focuses on Spatial Data Management, including retrieval, exchange, and processing of information for Geographic Information Systems and Location-Based Services. Other interests include Geography Markup Language (GML), and data visualization. Lakshmi N Sripada   received an MS in Information Systems from Virginia Polytechnic and State University in 2004. Her research interests include Data Visualization, GML, and Geographic Information Systems. Yufeng Kou   received a BS degree in Computer Science from Northwestern Polytechnic University, XiAn, China, in 1996, a MS degree in Computer Science from Beijing University of Post and Telecommunications in 1999. He is a PhD candidate in Computer Science Department, Virginia Polytechnic Institute and State University. His research interests include spatial data analysis, data mining, data warehousing, and Geographic Information Systems.   相似文献   

20.
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