基于标记仿射流局部直方图的视频序列异常运动检测与定位

Q1 Computer Science
Juan-Manuel Pérez-Rúa, A. Basset, P. Bouthemy
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引用次数: 12

摘要

我们提出了一种从基于摄像机视图的运动表示角度检测和定位视频中异常运动模式的原始方法。异常运动应从广义上理解,即意外的、异常的、奇异的、不规则的或不寻常的运动。在许多情况和应用中,在任何时间点和图像序列中的任何图像位置识别独特的动态信息是一个关键要求。所提出的方法依赖于所谓的标记仿射流(LAF),涉及仿射速度矢量和仿射运动类。在每个像素处,从在窗口集合上估计的一组候选模型中选择的仿射运动模型推断出一个运动类。然后,将图像细分为块,计算由仿射运动矢量大小加权的运动类直方图。将它们与具有特定距离的正常行为的直方图逐块进行比较。更具体地说,我们引入了局部离群因子(LOF)来检测异常块。LOF是特征空间中数据点相对密度的局部灵活度量,这里是LAF直方图的空间。通过设定LOF值的阈值,我们可以在视频序列的任何时刻检测到任何块中的异常运动模式。通过统计参数在每个块中自动设置阈值。我们报告了几个真实视频数据集的比较实验,表明我们的方法对于检测视频中不同类型的异常运动的复杂任务具有很强的竞争力。具体来说,我们在所有测试数据集上获得了非常有竞争力的结果:在帧水平上,UMN的AUC为99.2%,UCSD的AUC为82.8%,PETS 2009的准确率为95.73%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection and Localization of Anomalous Motion in Video Sequences from Local Histograms of Labeled Affine Flows
We propose an original method for detecting and localizing anomalous motion patterns in videos from a camera view -based motion representation perspective. Anomalous motion should be taken in a broad sense, i.e., unexpected, abnormal, singular, irregular, or unusual motion. Identifying distinctive dynamic information at any time point and at any image location in a sequence of images is a key requirement in many situations and applications. The proposed method relies on so-called labeled affine flows (LAF) involving both affine velocity vectors and affine motion classes. At every pixel a motion class is inferred from the affine motion model selected in a set of candidate models estimated over a collection of windows. Then, the image is subdivided in blocks where motion class histograms weighted by the affine motion vector magnitudes are computed. They are compared blockwise to histograms of normal behaviours with a dedicated distance. More specifically, we introduce the local outlier factor (LOF) to detect anomalous blocks. LOF is a local flexible measure of the relative density of data points in a feature space, here the space of LAF histograms. By thresholding the LOF value, we can detect an anomalous motion pattern in any block at any time instant of the video sequence. The threshold value is automatically set in each block by means of statistical arguments. We report comparative experiments on several real video datasets, demonstrating that our method is highly competitive for the intricate task of detecting different types of anomalous motion in videos. Specifically, we obtain very competitive results on all the tested datasets: 99.2 \% AUC for UMN, 82.8 \% AUC for UCSD, and 95.73 \% accuracy for PETS 2009, at the frame level.
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来源期刊
Frontiers in ICT
Frontiers in ICT Computer Science-Computer Networks and Communications
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