基于一维卷积网络的暴力检测

Narges Honarjoo, Ali Abdari, Azadeh Mansouri
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引用次数: 1

摘要

在监控视频处理中,暴力检测是发现各种场所异常事件的一项有用功能。采用同时考虑精度和复杂性的方法可以提供适合实时应用的系统。本文在研究传统的时间特征提取方法的基础上,利用一维卷积网络,提出了一种跨连续帧提取时间特征的新方法。这种基于低复杂度卷积的方法代表了一系列具有鲁棒特征向量的帧,可以应用于实时应用。在Hockey、ViolentFlow上的实验结果表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Violence Detection Using One-Dimensional Convolutional Networks
Violence detection in surveillance video processing is a useful capability helping discover abnormal events in a variety of places. Utilizing methods considering the accuracy and complexity simultaneously can provide systems suitable for real-time applications. In this paper, the traditional approach of extracting temporal features has been investigated, while by exploiting one-dimensional convolutional networks, a new approach is proposed, which extracts these features across consecutive frames properly. This low-complexity convolutional-based approach represents a series of frames with a robust feature vector, which can be applied for real-time applications. The experimental results on Hockey, ViolentFlow reveal the efficiency of this proposed method.
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