A Multi-Scale Spatio-Temporal Network for Violence Behavior Detection

Wei Zhou;Xuanlin Min;Yiheng Zhao;Yiran Pang;Jun Yi
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Abstract

Violence behavior detection has played an important role in computer vision, its widely used in unmanned security monitoring systems, Internet video filtration, etc. However, automatically detecting violence behavior from surveillance cameras has long been a challenging issue due to the real-time and detection accuracy. In this brief, a novel multi-scale spatio-temporal network termed as MSTN is proposed to detect violence behavior from video stream. To begin with, the spatio-temporal feature extraction module (STM) is developed to extract the key features between foreground and background of the original video. Then, temporal pooling and cross channel pooling are designed to obtain short frame rate and long frame rate from STM, respectively. Furthermore, short-time building (STB) branch and long-time building (LTB) branch are presented to extract the violence features from different spatio-temporal scales, where STB module is used to capture the spatial feature and LTB module is used to extract useful temporal feature for video recognition. Finally, a Trans module is presented to fuse the features of STB and LTB through lateral connection operation, where LTB feature is compressed into STB to improve the accuracy. Experimental results show the effectiveness and superiority of the proposed method on computational efficiency and detection accuracy.
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基于多尺度时空网络的暴力行为检测
暴力行为检测在计算机视觉中发挥着重要的作用,其广泛应用于无人安防监控系统、互联网视频过滤等领域。然而,由于监控摄像机的实时性和检测精度的限制,从监控摄像机中自动检测暴力行为一直是一个具有挑战性的问题。本文提出了一种新的多尺度时空网络MSTN来检测视频流中的暴力行为。首先,开发了时空特征提取模块(STM),提取原始视频的前景和背景之间的关键特征。然后设计时序池化和跨信道池化,分别从STM获取短帧率和长帧率。在此基础上,提出了短时建筑分支(short-time building branch, STB)和长时建筑分支(long-time building branch, LTB)来提取不同时空尺度上的暴力特征,其中短时建筑模块用于捕获空间特征,长时建筑模块用于提取对视频识别有用的时间特征。最后,提出了Trans模块,通过横向连接操作将STB和LTB特征融合,将LTB特征压缩到STB中,提高精度。实验结果表明了该方法在计算效率和检测精度上的有效性和优越性。
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2024 Index IEEE Transactions on Biometrics, Behavior, and Identity Science Vol. 6 Table of Contents IEEE T-BIOM Editorial Board Changes IEEE Transactions on Biometrics, Behavior, and Identity Science Cutting-Edge Biometrics Research: Selected Best Papers From IJCB 2023
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