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A Rapid Recognition Method for Pedestrian Abnormal Behavior

机译:行人异常行为的快速识别方法

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In recent years, with the development of deep learning technology, human behavior recognition has gradually become a very challenging and important topic in the field of computer vision. Human behavior recognition algorithms generally exploit temporal domain information such as optical flow and LSTM, or utilize 3D convolution, leading to large calculation and slow recognition speed, which is difficult to meet the requirements of speed and cost in practical applications. Therefore, this paper proposes a rapid recognition method that can quickly recognize the abnormal behavior of pedestrians. We extract the human skeleton information and remove the background to obtain a feature image containing only the human skeleton information, and then the Multi-scale information Fusion recognition Network (MFN) designed in this paper is used to recognize the abnormal behavior of pedestrians. We have achieved an accuracy rate of 96.3% in the self-built skeleton-based pedestrian abnormal behavior data set and the amount of calculation has dropped significantly.
机译:近年来,随着深度学习技术的发展,人类的行为认可逐渐成为计算机愿景领域的一个非常具有挑战性和重要的话题。人类行为识别算法通常利用诸如光流量和LSTM的时间域信息,或利用3D卷积,从而实现大的计算和慢速识别速度,这难以满足实际应用中的速度和成本的要求。因此,本文提出了一种快速识别方法,可以快速识别行人的异常行为。我们提取人的骨架信息并删除背景以获得仅包含人骨架信息的特征图像,然后使用本文设计的多尺度信息融合识别网络(MFN)用于识别行人的异常行为。我们在自置骨架的行人异常行为数据集中实现了96.3%的准确率,并且计算量显着下降。

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