Multiple exposure images based traffic light recognition

C. Jang, Chansoo Kim, Dongchul Kim, Minchae Lee, M. Sunwoo
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引用次数: 45

Abstract

This paper proposes a multiple exposure images based traffic light recognition method. For traffic light recognition, color segmentation is widely used to detect traffic light signals; however, the color in an image is easily affected by various illuminations and leads to incorrect recognition results. In order to overcome the problem, we propose the multiple exposure technique which enhances the robustness of the color segmentation and recognition accuracy by integrating both low and normal exposure images. The technique solves the color saturation problem and reduces false positives since the low exposure image is exposed for a short time. Based on candidate regions selected from the low exposure image, the status of six three and four bulb traffic lights in a normal image are classified utilizing a support vector machine with a histogram of oriented gradients. Our algorithm was finally evaluated in various urban scenarios and the results show that the proposed method works robustly for outdoor environments.
基于多重曝光图像的交通灯识别
提出了一种基于多曝光图像的交通灯识别方法。在红绿灯识别中,颜色分割被广泛应用于红绿灯信号的检测;然而,图像中的颜色容易受到各种光照的影响,从而导致错误的识别结果。为了克服这一问题,我们提出了多重曝光技术,通过整合低曝光和正常曝光图像来增强颜色分割的鲁棒性和识别精度。该技术解决了低曝光图像曝光时间短带来的色彩饱和度问题,减少了误报。基于从低曝光图像中选择的候选区域,利用具有方向梯度直方图的支持向量机对正常图像中的6个三灯泡和四灯泡交通灯的状态进行分类。最后在不同的城市场景中对该算法进行了评估,结果表明该方法对室外环境具有良好的鲁棒性。
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