基于改进凝视和行走状态估计的隐藏追随者检测

Yaxi Chen, Ruimin Hu, Danni Xu, Zheng Wang, Linbo Luo, Dengshi Li
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引用次数: 0

摘要

隐性跟踪是一种具有特殊目的的跟踪行为,发现隐性跟踪行为可以提前预防许多犯罪活动。之前的方法使用凝视和间隔行为来区分隐藏的追随者和正常的行人。然而,它们以二值的粗粒度方式表达凝视行为,难以准确描述行人的凝视状态。为此,我们基于注视方向越靠近某人的原则,选择合适的映射函数,提出了精细化的隐藏追随者检测(RHFD)模型,该模型将注视方向转化为连续的估计注视状态,代表行人复杂多变的注视行为。同时,我们引入了行人速度大小和方向的变化,以改进行人行走状态的表示。在监测数据集上的实验结果表明,RHFD优于最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hidden Follower Detection via Refined Gaze and Walking State Estimation
Hidden following is following behavior with special intentions, and detecting hidden following behavior can prevent many criminal activities in advance. The previous method uses gaze and spacing behaviors to distinguish hidden followers from normal pedestrians. However, they express gaze behaviors in a coarse-grained way with binary values, making it difficult to accurately depict the gaze state of pedestrians. To this end, we propose the Refined Hidden Follower Detection (RHFD) model by choosing a suitable mapping function based on the principle that the closer the gaze direction is to someone, the more likely it is to gaze at someone, which converts the gaze direction into a continuous estimated gaze state representing the complex and variable gaze behavior of pedestrians. Simultaneously, we introduce variations in the magnitude and direction of pedestrian velocity to refine the representation of pedestrian walking states. Experimental results on the surveillance dataset show that RHFD outperforms state-of-the-art methods.
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