监控视频中人类暴力行为的识别与检测

P. Bilinski, F. Brémond
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引用次数: 82

摘要

本文重点研究了监控视频中的暴力识别与检测问题。我们的目标是确定暴力是否发生在视频中(识别)以及何时发生(检测)。首先,我们提出了视频的改进费雪向量(IFV)的扩展,它允许使用局部特征和它们的时空位置来表示视频。然后,我们研究了流行的滑动窗口暴力检测方法,并重新制定了改进的Fisher向量,并使用求和面积表数据结构来加快该方法的速度。我们在4个最先进的数据集上提出了广泛的评估、比较和分析。我们表明,所提出的改进使暴力识别更加准确(与标准IFV、时空网格IFV和其他最先进的方法相比),并使暴力检测显著加快。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human violence recognition and detection in surveillance videos
In this paper, we focus on the important topic of violence recognition and detection in surveillance videos. Our goal is to determine if a violence occurs in a video (recognition) and when it happens (detection). Firstly, we propose an extension of the Improved Fisher Vectors (IFV) for videos, which allows to represent a video using both local features and their spatio-temporal positions. Then, we study the popular sliding window approach for violence detection, and we re-formulate the Improved Fisher Vectors and use the summed area table data structure to speed up the approach. We present an extensive evaluation, comparison and analysis of the proposed improvements on 4 state-of-the-art datasets. We show that the proposed improvements make the violence recognition more accurate (as compared to the standard IFV, IFV with spatio-temporal grid, and other state-of-the-art methods) and make the violence detection significantly faster.
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