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A classification method based on optical flow for violence detection

机译:基于光流的暴力检测分类方法

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Violence detection is one of the substantial and challenging topics in intelligent video surveillance systems. As there is a growing demand on video surveillance systems with the capability of automatic violence detection, we focus on existing violence detection methods to improve them. In this paper, we introduce a new feature descriptor named Histogram of Optical flow Magnitude and Orientation (HOMO). First, the proposed method converts input frames to the grayscale format. Next, it computes the optical flow between two consequence frames. Then, the optical flow magnitude and orientation of each pixel in each frame are compared separately with its predecessor frame to obtain meaningful changes of magnitude and orientation. Subsequently, different threshold values are applied to the magnitude and orientation changes for obtaining six binary indicators. Finally, these binary indicators are analyzed to get the HOMO descriptor which is used to train a SVM classifier. The system has been implemented using MATLAB. To evaluate the proposed method, two benchmark datasets have been used. The comparison of HOMO and other descriptors on benchmark datasets demonstrates satisfactory performance. (C) 2019 Elsevier Ltd. All rights reserved.
机译:暴力检测是智能视频监控系统中重要且具有挑战性的主题之一。随着对具有自动暴力检测功能的视频监视系统的需求不断增长,我们将重点放在现有的暴力检测方法上,以对其进行改进。在本文中,我们介绍了一种新的特征描述符,称为光流大小和方向直方图(HOMO)。首先,所提出的方法将输入帧转换为灰度格式。接下来,它计算两个结果帧之间的光流。然后,将每个帧中每个像素的光流大小和方向分别与其前一帧进行比较,以获得有意义的大小和方向变化。随后,将不同的阈值应用于幅度和方向变化,以获得六个二进制指标。最后,分析这些二进制指标以获得用于训练SVM分类器的HOMO描述符。该系统已使用MATLAB实现。为了评估所提出的方法,使用了两个基准数据集。在基准数据集上对HOMO和其他描述符的比较显示出令人满意的性能。 (C)2019 Elsevier Ltd.保留所有权利。

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