Unconscious Behavior Detection for Pedestrian Safety Based on Gesture Features

Yaru Dong, Yidong Li, Wenhua Liu, Jun Wu
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引用次数: 2

Abstract

Behavior detection is an important research field in pattern recognition and it can be applied to control the traffic safety. The mobile phones becomes a potential security when the pedestrians unconsciously use the phones during the crossing of the street. To avoid the traffic accidents, this paper proposes a new algorithm of the pedestrian behavior detection for the people unconsciously using phones. Firstly, the method that pedestrian detection based on gradient and texture feature integration is used to find the position of pedestrian. Secondly, Selective search is used to get the position of sensitive parts. We choose the arms as the sensitive parts in this algorithm. Finally, we extract and classify sensitive parts. Currently, fewer people are studying this topic. Therefore, we construct a new pedestrian image set that contains 2.5G images called PWUM (Pedestrian Who use mobile phone) set for verifying the effectiveness of our algorithm. Experimental results show that the proposed algorithm can efficiently detect pedestrian who is using mobile phone on PWUM dataset.
基于手势特征的行人安全无意识行为检测
行为检测是模式识别中的一个重要研究领域,可以应用于交通安全控制。当行人在过马路时不自觉地使用手机时,手机就成为了潜在的安全隐患。为了避免交通事故的发生,本文提出了一种针对无意识使用手机人群的行人行为检测新算法。首先,采用基于梯度和纹理特征融合的行人检测方法寻找行人的位置;其次,采用选择性搜索得到敏感部位的位置;在该算法中,我们选择臂作为敏感部位。最后对敏感部位进行提取和分类。目前,很少有人研究这个话题。因此,我们构建了一个包含2.5G图像的新的行人图像集,称为PWUM (pedestrian Who use mobile phone)集,用于验证算法的有效性。实验结果表明,该算法可以有效地检测出在PWUM数据集上使用手机的行人。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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