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基于轨迹系数特征空间表示法的含有异常情况的自动运动学习
引用本文:KHALID Shehzad,NAFTEL Andrew. 基于轨迹系数特征空间表示法的含有异常情况的自动运动学习[J]. 自动化学报, 2010, 36(5): 655-666. DOI: 10.3724/SP.J.1004.2010.00655
作者姓名:KHALID Shehzad  NAFTEL Andrew
作者单位:1.Department of Computer Science and Engineering, Bahria University, Islamabad 44000, Pakistan
摘    要:Techniques for understanding video object motion activity are becoming increasingly important with the widespread adoption of CCTV surveillance systems. Motion trajectories provide rich spatiotemporal information about an object's activity. This paper presents a novel technique for clustering of object trajectory-based video motion clips using basis function approximations. Motion cues can be extracted using a tracking algorithm on video streams from video cameras. In the proposed system, trajectories are treated as time series and modelled using orthogonal basis function representation. Various function approximations have been compared including least squares polynomial, Chebyshev polynomials, piecewise aggregate approximation, discrete Fourier transform (DFT), and modified DFT (DFT-MOD). A novel framework, namely iterative hierarchical semi-agglomerative clustering using learning vector quantization (Iterative HSACT-LVQ), is proposed for learning of patterns in the presence of significant number of anomalies in training data. In this context, anomalies are defined as atypical behavior patterns that are not represented by sufficient samples in training data and are infrequently occurring or unusual. The proposed algorithm does not require any prior knowledge about the number of patterns hidden in unclassified dataset. Experiments using complex real-life trajectory datasets demonstrate the superiority of our proposed Iterative HSACT-LVQ-based motion learning technique compared to other recent approaches.

关 键 词:Object trajectory   dimensionality reduction   trajectory clustering   event mining   anomaly detection
收稿时间:2008-12-29
修稿时间:2009-05-15

Automatic Motion Learning in the Presence of Anomalies Using Coefficient Feature Space Representation of Trajectories
KHALID Shehzad NAFTEL ,rew. Automatic Motion Learning in the Presence of Anomalies Using Coefficient Feature Space Representation of Trajectories[J]. Acta Automatica Sinica, 2010, 36(5): 655-666. DOI: 10.3724/SP.J.1004.2010.00655
Authors:KHALID Shehzad NAFTEL   rew
Affiliation:1.Department of Computer Science and Engineering, Bahria University, Islamabad 44000, Pakistan;2.Department of Computer Science, University of Manchester, Manchester M601QD, United Kingdom
Abstract:Techniques for understanding video object motion activity are becoming increasingly important with the widespread adoption of CCTV surveillance systems. Motion trajectories provide rich spatiotemporal information about an object's activity. This paper presents a novel technique for clustering of object trajectory-based video motion clips using basis function approximations. Motion cues can be extracted using a tracking algorithm on video streams from video cameras. In the proposed system, trajectories are treated as time series and modelled using orthogonal basis function representation. Various function approximations have been compared including least squares polynomial, Chebyshev polynomials, piecewise aggregate approximation, discrete Fourier transform (DFT), and modified DFT (DFT-MOD). A novel framework, namely iterative hierarchical semi-agglomerative clustering using learning vector quantization (Iterative HSACT-LVQ), is proposed for learning of patterns in the presence of significant number of anomalies in training data. In this context, anomalies are defined as atypical behavior patterns that are not represented by sufficient samples in training data and are infrequently occurring or unusual. The proposed algorithm does not require any prior knowledge about the number of patterns hidden in unclassified dataset. Experiments using complex real-life trajectory datasets demonstrate the superiority of our proposed Iterative HSACT-LVQ-based motion learning technique compared to other recent approaches.
Keywords:Object trajectory  dimensionality reduction  trajectory clustering  event mining  anomaly detection
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