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Violence detection in videos for an intelligent surveillance system using MoBSIFT and movement filtering algorithm

机译:使用MoBSIFT和运动过滤算法的智能监控系统中的视频暴力检测

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Action recognition is an active research area in computer vision as it has enormous applications in today's world, out of which, recognizing violent action is of great importance since it is closely related to our safety and security. An intelligent surveillance system is the idea of automatically recognizing suspicious activities in surveillance videos and thereby supporting security personals to take up right action on the right time. Under this area, most of the researchers were focused on people detection and tracking, loitering, etc., whereas detecting violent actions or fights is comparatively a less studied area. Previous works considered the local spatiotemporal feature extractors; however, it accompanies the overhead of complex optical flow estimation. Even though the temporal derivative is a fast alternative to optical flow, it alone gives very low accuracy and scales-dependent result. Hence, here we propose a cascaded method of violence detection based on motion boundary SIFT (MoBSIFT) and movement filtering. In this method, the surveillance videos are checked through a movement filtering algorithm based on temporal derivative and avoid most of the nonviolent actions from going through feature extraction. Only the filtered frames may allow going through feature extraction. In addition to scale-invariant feature transform (SIFT) and histogram of optical flow feature, motion boundary histogram is also extracted and combined to form MoBSIFT descriptor. The experimental results show that the proposed MoBSIFT outperforms the existing methods in accuracy by its high tolerance to camera movements. Time complexity has also proved to be reduced by the use of movement filtering along with MoBSIFT.
机译:动作识别在计算机视觉中是一个活跃的研究领域,因为它在当今世界中具有广泛的应用,在其中,识别暴力动作非常重要,因为它与我们的安全性息息相关。智能监视系统的概念是自动识别监视视频中的可疑活动,从而支持安全人员在正确的时间采取正确的措施。在这一领域,大多数研究人员专注于人们的侦查和跟踪,游荡等,而对暴力行为或战斗的检测则相对较少。先前的工作考虑了局部时空特征提取器;然而,它伴随着复杂的光流估计的开销。即使时间导数是光流的快速替代方法,但仅凭时间导数就给出了非常低的精度和与比例有关的结果。因此,在此我们提出一种基于运动边界SIFT(MoBSIFT)和运动过滤的暴力检测的级联方法。在这种方法中,通过基于时间导数的运动过滤算法对监视视频进行检查,并避免了大多数非暴力行为经过特征提取。仅过滤的帧可以允许进行特征提取。除了比例不变特征变换(SIFT)和光流特征直方图外,还提取运动边界直方图并将其组合以形成MoBSIFT描述符。实验结果表明,所提出的MoBSIFT对相机运动具有很高的容忍度,其准确性优于现有方法。还证明了通过与MoBSIFT一起使用运动过滤来减少时间复杂度。

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