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1.
Shape-based retrieval of 3D models has become an important challenge in computer graphics. Object similarity, however, is a subjective matter, dependent on the human viewer, since objects have semantics and are not mere geometric entities. Relevance feedback aims at addressing the subjectivity of similarity. This paper presents a novel relevance feedback algorithm that is based on supervised as well as unsupervised feature extraction techniques. It also proposes a novel signature for 3D models, the sphere projection. A Web search engine that realizes the signature and the relevance feedback algorithm is presented. We show that the proposed approach produces good results and outperforms previous techniques.  相似文献   

2.
In content-based image retrieval context, a classic strategy consists in computing off-line a dictionary of visual features. This visual dictionary is then used to provide a new representation of the data which should ease any task of classification or retrieval. This strategy, based on past research works in text retrieval, is suitable for the context of batch learning, when a large training set can be built either by using a strong prior knowledge of data semantics (like for textual data) or with an expensive off-line pre-computation. Such an approach has major drawbacks in the context of interactive retrieval, where the user iteratively builds the training data set in a semi-supervised approach by providing positive and negative annotations to the system in the relevance feedback loop. The training set is thus built for each retrieval session without any prior knowledge about the concepts of interest for this session. We propose a completely different approach to build the dictionary on-line from features extracted in relevant images. We design the corresponding kernel function, which is learnt during the retrieval session. For each new label, the kernel function is updated with a complexity linear with respect to the size of the database. We propose an efficient active learning strategy for the weakly supervised retrieval method developed in this paper. Moreover this framework allows the combination of features of different types. Experiments are carried out on standard databases, and show that a small dictionary can be dynamically extracted from the features with better performances than a global one.  相似文献   

3.
Zhang  Hongjiang  Chen  Zheng  Li  Mingjing  Su  Zhong 《World Wide Web》2003,6(2):131-155
A major bottleneck in content-based image retrieval (CBIR) systems or search engines is the large gap between low-level image features used to index images and high-level semantic contents of images. One solution to this bottleneck is to apply relevance feedback to refine the query or similarity measures in image search process. In this paper, we first address the key issues involved in relevance feedback of CBIR systems and present a brief overview of a set of commonly used relevance feedback algorithms. Almost all of the previously proposed methods fall well into such framework. We present a framework of relevance feedback and semantic learning in CBIR. In this framework, low-level features and keyword annotations are integrated in image retrieval and in feedback processes to improve the retrieval performance. We have also extended framework to a content-based web image search engine in which hosting web pages are used to collect relevant annotations for images and users' feedback logs are used to refine annotations. A prototype system has developed to evaluate our proposed schemes, and our experimental results indicated that our approach outperforms traditional CBIR system and relevance feedback approaches.  相似文献   

4.
In the last few years, we have seen an upsurge of interest in content-based image retrieval (CBIR)—the selection of images from a collection via features extracted from images themselves. Often, a single image attribute may not have enough discriminative information for successful retrieval. On the other hand when multiple features are used, it is hard to determine the suitable weighing factors for various features for optimal retrieval. In this paper, we present a relevance feedback framework with Integrated Probability Function (IPF) which combines multiple features for optimal retrieval. The IPF is based on a new posterior probability estimator and a novel weight updating approach. We perform experiments on 1400 monochromatic trademark images have been performed. The proposed IPF is shown to be more effective and efficient to retrieve deformed trademark images than the commonly used integrated dissimilarity function. The new posterior probability estimator is shown to be generally better than the existing one. The proposed novel weight updating approach by relevance feedback is shown to be better than both the existing scoring approach and the existing ratio approach. In experiments, 95% of the targets are ranked at the top five positions. By two iterations of relevance feedback, retrieval performance can be improved from 75% to over 95%. The IPF and its relevance feedback framework proposed in this paper can be effectively and efficiently used in content-based image retrieval.  相似文献   

5.
基于目标区域和相关反馈的图像检索   总被引:1,自引:0,他引:1  
提出了一种基于目标区域和相关反馈的图像检索方法,首先采用改进的K均值无监督分割方法将图像分割成区域,然后提取每个区域的颜色、位置、形状特征进行相似度计算;最后采用基于支持向量机(SVM)的相关反馈算法提高检索精度。实验结果表明,方法具有良好的检索性能。  相似文献   

6.
In this paper, we present a method of image indexing and retrieval which takes into account the relative positions of the regions within the image. Indexing is based on a segmentation of the image into fuzzy regions; we propose an algorithm which produces a fuzzy segmentation. The image retrieval is based on inexact graph matching, taking into account both the similarity between regions and the spatial relation between them. We propose, on one hand a solution to reduce the combinatorial complexity of the graph matching, and on the other hand, a measure of similarity between graphs allowing the result images ranking. A relevance feedback process based on region classifiers allows then a good generalization to a large variety of the regions. The method is adapted to partial queries, aiming for example at retrieving images containing a specific type of object. Applications may be of two types, firstly an on-line search from a partial query, with a relevance feedback aiming at interactively leading the search, and secondly an off-line learning of categories from a set of examples of the object. The name of the system is FReBIR for Fuzzy Region-Based Image Retrieval.  相似文献   

7.
相关反馈技术被有效的应用于基于内容的图像检索.传统的相关反馈未能充分利用检索的历史信息.为了进一步提高检索的效率与准确性,提出一种基于历史检索信息学习的相关反馈检索方法.该方法将每次检索的结果作为历史检索信息保存.进行新的检索时,判断当前查询图像与历史检索信息的语义相关性,预测检索结果,以期减少相关反馈次数.对包含80 00幅图像的图像库实验表明,与传统相关反馈技术相比,该方法明显的改善了检索性能.  相似文献   

8.
Measuring visual similarity between two or more instances within a data distribution is a fundamental task in image retrieval. Theoretically, non-metric distances are able to generate a more complex and accurate similarity model than metric distances, provided that the non-linear data distribution is precisely captured by the system. In this work, we explore neural networks models for learning a non-metric similarity function for instance search. We argue that non-metric similarity functions based on neural networks can build a better model of human visual perception than standard metric distances. As our proposed similarity function is differentiable, we explore a real end-to-end trainable approach for image retrieval, i.e. we learn the weights from the input image pixels to the final similarity score. Experimental evaluation shows that non-metric similarity networks are able to learn visual similarities between images and improve performance on top of state-of-the-art image representations, boosting results in standard image retrieval datasets with respect standard metric distances.  相似文献   

9.
Traditional content-based image retrieval (CBIR) scheme with assumption of independent individual images in large-scale collections suffers from poor retrieval performance. In medical applications, images usually exist in the form of image bags and each bag includes multiple relevant images of the same perceptual meaning. In this paper, based on these natural image bags, we explore a new scheme to improve the performance of medical image retrieval. It is feasible and efficient to search the bag-based medical image collection by providing a query bag. However, there is a critical problem of noisy images which may present in image bags and severely affect the retrieval performance. A new three-stage solution is proposed to perform the retrieval and handle the noisy images. In stage 1, in order to alleviate the influence of noisy images, we associate each image in the image bags with a relevance degree. In stage 2, a novel similarity aggregation method is proposed to incorporate image relevance and feature importance into the similarity computation process. In stage 3, we obtain the final image relevance in an adaptive way which can consider both image bag similarity and individual image similarity. The experiments demonstrate that the proposed approach can improve the image retrieval performance significantly.  相似文献   

10.
A new scheme of learning similarity measure is proposed for content-based image retrieval (CBIR). It learns a boundary that separates the images in the database into two clusters. Images inside the boundary are ranked by their Euclidean distances to the query. The scheme is called constrained similarity measure (CSM), which not only takes into consideration the perceptual similarity between images, but also significantly improves the retrieval performance of the Euclidean distance measure. Two techniques, support vector machine (SVM) and AdaBoost from machine learning, are utilized to learn the boundary. They are compared to see their differences in boundary learning. The positive and negative examples used to learn the boundary are provided by the user with relevance feedback. The CSM metric is evaluated in a large database of 10009 natural images with an accurate ground truth. Experimental results demonstrate the usefulness and effectiveness of the proposed similarity measure for image retrieval.  相似文献   

11.
基于长期学习的多媒体数据库相似性检索   总被引:5,自引:0,他引:5  
基于内容的相似性检索是多媒体数据库研究的重要内容之一.近年来,利用用户相关反馈技术改善检索性能的研究成为新的热点.但是,在传统的相关反馈方法中,系统积累的反馈历史数据未得到充分利用.为了进一步提高检索系统的性能,提出了一种对相关反馈序列日志进行协同过滤在线分析的相关反馈检索方法.该方法使用编辑距离对用户的反馈序列进行相似性度量,并根据协同过滤的思想对数据库中的媒体对象与当前检索的语义相关性进行预测,从而改善检索的效果.实现了一个图像数据库检索原型系统.对11 000幅图像数据库进行的实验表明,与传统相关反馈技术相比,该方法对检索性能有明显的改善.  相似文献   

12.
Content-based image retrieval aims at substituting traditional indexing based on manual annotation by using automatically-extracted visual indexing features. Novel techniques are needed however to efficiently deal with the semantic gap (i.e. the partial match between the low-level features and the visual content). Here, we investigate a query-free retrieval approach first proposed by Ferecatu and Geman. This approach relies solely on an iterative relevance feedback mechanism that drives a heuristic sampling of the collection, and aims to take explicitly into account the semantic gap. Our contributions are related to three complementary aspects. First, we formalize a large-scale approach based on a hierarchical tree-like organization of the images computed off-line. Second, we propose a versatile modulation of the exploration/exploitation trade-off based on the consistency of the system internal states between successive iterations. Third, we elaborate a long-term optimization of the similarity metric based on the user searching session logs accumulated off-line. We implemented a web-application that integrates all our contributions, and distribute it under the AGPL Version 3 free software license. We organized user-based evaluation campaigns using ImageNet dataset, and show empirically that our contributions significantly improve the retrieval performance of the original framework, that they are complementary to each other, and that their overall integration is consistently beneficial.  相似文献   

13.
The technique of relevance feedback has been introduced to content-based 3D model retrieval, however, two essential issues which affect the retrieval performance have not been addressed. In this paper, a novel relevance feedback mechanism is presented, which effectively makes use of strengths of different feature vectors and perfectly solves the problem of small sample and asymmetry. During the retrieval process, the proposed method takes the user’s feedback details as the relevant information of query model, and then dynamically updates two important parameters of each feature vector, narrowing the gap between high-level semantic knowledge and low-level object representation. The experiments, based on the publicly available 3D model database Princeton Shape Benchmark (PSB), show that the proposed approach not only precisely captures the user’s semantic knowledge, but also significantly improves the retrieval performance of 3D model retrieval. Compared with three state-of-the-art query refinement schemes for 3D model retrieval, it provides superior retrieval effectiveness only with a few rounds of relevance feedback based on several standard measures.
Biao LengEmail:
  相似文献   

14.
15.
图像检索中的动态相似性度量方法   总被引:10,自引:0,他引:10  
段立娟  高文  林守勋  马继涌 《计算机学报》2001,24(11):1156-1162
为提高图像检索的效率,近年来相关反馈机制被引入到了基于内容的图像检索领域。该文提出了一种新的相关反馈方法--动态相似性度量方法。该方法建立在目前被广泛采用的图像相拟性度量方法的基础上,结合了相关反馈图像检索系统的时序特性,通过捕获用户的交互信息,动态地修正图像的相似性度量公式,从而把用户模型嵌入到了图像检索系统,在某种程度上使图像检索结果与人的主观感知更加接近。实验结果表明该方法的性能明显优于其它图像检索系统所采用的方法。  相似文献   

16.
在颜色RGB三维空间中,结合空间解析几何,以分块直方图图像检索为基础,提出了特征向量的球域相似性度量算法,同时还时相关反馈进行了深入研究,改进了区域权重自动调整的相关反馈。最后,通过时检索结果进行验证,本文所叙述的方法有良好的检索效果。  相似文献   

17.
李迎新  张明  陆鹏 《现代计算机》2007,(2):94-97,100
在基于图像内容的图像检索(CBIR)系统中,搜索引擎检索图像类似于按照相似标准来查询图像,它应该有足够快的速度并且有较高的检索准确率.索引用来提高系统响应,而相关反馈用于帮助提高检索准确率.在本文中,主要说明基于人感知的相似性度量,以及讨论综合相关反馈的索引方案.该索引方案通过分析特征熵而得出的主从键,而相关反馈是根据Mann-Whitnev检验而提出的,该检验通常用来识别来自同一搜索集中相关图像和不相关图像之间不同特征,并利用不同特征的特点提高检索性能.相关反馈方案针对两不同相似标准来执行,检验判定了这个方法的有效性.最后,把索引机制和相关反馈机制结合起来建立搜索引擎.  相似文献   

18.
19.
基于组合分类器的相关反馈算法研究   总被引:1,自引:0,他引:1  
基于内容的矢量图形检索系统可以通过使用相关反馈算法获得较好的检索性能。提出了一种新的基于组合分类器的相关反馈算法,该算法以每一个正负反馈样本作为唯一的训练样本,形成各个独立的最近邻分类器,融合各个分类器的预估结果,计算库中每个图形的相关分数,并引入贝叶斯查询点移动技术来优化相关分数。实验结果表明,该算法在进一步提高矢量图形检索系统查准率的同时,还能保证系统的查全率。  相似文献   

20.
基于反馈日志分析的图像检索相关反馈方法   总被引:7,自引:0,他引:7  
基于内容的图像检索是多媒体数据库研究的重要内容之一。近年来,采用用户相关反馈方法提高检索效率的研究已成为新的热点,用户相关反馈是一种交互式的渐进过程,如何提高反馈效率,减少交互次数是该技术面临的主要问题,提出一种通过对相关反馈历史数据进行在线分析从而加快反馈过程的新方法,对10000幅图像数据库的实验表明,与传统相关反馈技术相比,新方法对检索效果有明显改善。  相似文献   

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