Driver's Seat Belt Detection in Crossroad Based on Gradient Orientation

Dian Yu, Hong Zheng, Cao Liu
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引用次数: 7

Abstract

Seat belt detection is one of the important detecting functions and is widely needed in the field of intelligent transportation system. However, research for which is still limited in terms of the increasing requirements at present. In this paper, one algorithm for detecting vehicle seat belts on road is proposed. And according to the method discussed in this paper, a type of feature based on gradient orientation is employed to describe and detect seat belts. After the image pre-processing, the front window location and the human face detecting, this feature is finally extracted in the selected region and the conclusion is given by counting the seat belt feature in the area which close to the right side of the detected human face area. Another approach is also designed in case that the human face detection fails. Tests on high-definition vehicle images show that the proposed algorithm is capable of extracting belt-feature under difference circumstances and is also effective to tell whether the driver has fastened its seat belt.
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基于梯度定向的十字路口驾驶员安全带检测
安全带检测是智能交通系统中重要的检测功能之一,在智能交通系统中有着广泛的应用需求。然而,目前对其的研究还很有限,要求越来越高。本文提出了一种道路车辆安全带检测算法。根据本文所讨论的方法,采用一种基于梯度方向的特征来描述和检测安全带。经过图像预处理、前窗定位和人脸检测,最终在选定区域中提取出该特征,并通过对被检测人脸区域右侧附近区域的安全带特征进行计数得出结论。在人脸检测失败的情况下,还设计了另一种方法。在高清晰度车辆图像上的测试表明,该算法能够在不同情况下提取安全带特征,并能有效判断驾驶员是否系好安全带。
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