A Fine Grained Quality Assessment of Video Anomaly Detection

Jiang Zhou, Kevin McGuinness, Joseph Antony, Noel E O 'connor
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Abstract

In this paper we propose a new approach to assess the performance of video anomaly detection algorithms. Inspired by the COCO metrics we propose a quartile based quality assessment of video anomaly detection to have a detailed breakdown of algorithm performance. The proposed assessment divides the detection into five categories based on the measurement quartiles of the position, scale and motion magnitude of anomalies. A weighted precision is introduced in the average precision calculation such that the frame-level average precision reported in categories can be compared to each other regardless of the baseline of the precision-recall curve in every category. We evaluated three video anomaly detection approaches, including supervised and unsupervised approaches, on five public datasets using the proposed approach. Our evaluation shows that the anomaly scale introduces performance difference in detection. For both supervised and unsupervised methods evaluated, the detection achieve higher average precision for the large anomalies in scale. Our assessment also shows that the supervised multiple instance learning method is robust to the motion magnitude differences in anomalies, while the unsupervised one-class neural network method performs better than the unsupervised autoencoder reconstruction method when the motion magnitudes are small. Our experiments, however, also show that the positions of the anomalies have impact on the performance of the multiple instance learning method and the one-class neural network method but the impact on the autoencoder-based approach is negligible.
视频异常检测的细粒度质量评估
本文提出了一种评估视频异常检测算法性能的新方法。受COCO指标的启发,我们提出了基于四分位数的视频异常检测质量评估,以详细分解算法性能。基于异常位置、尺度和运动幅度的测量四分位数,将检测分为五类。在平均精度计算中引入加权精度,使得不同类别报告的帧级平均精度可以相互比较,而不考虑每个类别的精度-召回曲线的基线。我们使用该方法在5个公共数据集上评估了三种视频异常检测方法,包括监督和无监督方法。我们的评价表明,异常尺度在检测中引入了性能差异。无论采用监督方法还是非监督方法,对于大尺度的异常,检测的平均精度都达到了较高的水平。我们的评估还表明,有监督的多实例学习方法对异常的运动幅度差异具有鲁棒性,而无监督的一类神经网络方法在运动幅度较小时优于无监督的自编码器重建方法。然而,我们的实验也表明,异常位置对多实例学习方法和单类神经网络方法的性能有影响,但对基于自编码器的方法的影响可以忽略不计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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