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Domain-Transformable Sparse Representation for Anomaly Detection in Moving-Camera Videos

机译:移动式摄像机视频中异常检测的域变换稀疏表示

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摘要

This paper presents a special matrix factorization based on sparse representation that detects anomalies in video sequences generated with moving cameras. Such representation is made by associating the frames of the target video, that is a sequence to be tested for the presence of anomalies, with the frames of an anomaly-free reference video, which is a previously validated sequence. This factorization is done by a sparse coefficient matrix, and any target-video anomaly is encapsulated into a residue term. In order to cope with camera trepidations, domain-transformations are incorporated into the sparse representation process. Approximations of the transformed-domain optimization problem are introduced to turn it into a feasible iterative process. Results obtained from a comprehensive video database acquired with moving cameras on a visually cluttered environment indicate that the proposed algorithm provides a better geometric registration between reference and target videos, greatly improving the overall performance of the anomaly-detection system.
机译:本文介绍了基于稀疏表示的特殊矩阵分解,检测使用移动摄像机产生的视频序列中的异常。通过将目标视频的帧相关联来进行这样的表示,这是用于存在异常的序列,其具有异常的基准视频的帧,这是先前验证的序列。该分解是通过稀疏系数矩阵完成的,并且将任何靶 - 视频异常封装到残留项中。为了应对相机牵引,域变换并入到稀疏表示过程中。引入了变换域优化问题的近似,使其变为可行的迭代过程。在视觉上杂乱环境中获取的综合视频数据库获得的结果表明,所提出的算法在参考和目标视频之间提供更好的几何配准,大大提高了异常检测系统的整体性能。

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