基于质心的混合交通标志识别算法

Jitendra N. Chourasia, P. Bajaj
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引用次数: 34

摘要

自动交通标志识别系统可以帮助驾驶员在正确的时间做出正确的决策,保证安全驾驶。提出了一种基于颜色质心匹配的交通标志检测算法。该算法从复杂道路环境中采集的图像中检测交通标志。采用YCbCr色彩空间进行色彩分割,使检测过程不受光照变化特性的影响。该方法根据交通标志的颜色对检测到的标志进行提取和分类。通过考虑边界像素到质心的最大距离来提取符号。根据其形状,标志进一步分为其子组。最小欧氏距离分类器用于检测符号的形状。采用感知器神经网络(NN)对分类符号进行识别。结果表明,该算法在多幅室外交通标志图像上的颜色分类率为100%,形状分类率为98%。所开发算法的总体识别率在92%左右。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Centroid Based Detection Algorithm for Hybrid Traffic Sign Recognition System
Automatic traffic sign recognition system can help the driver to make a right decision at the right time for safe driving. This paper presents an algorithm for detection of traffic sign using color centroid matching. This algorithm detects the traffic sign from the images captured from the complex road environment. YCbCr color space is used for color segmentation to make the detection process independent of variable illumination characteristic. The proposed method extracts and classifies the detected sign according to colors of the traffic sign. The sign is extracted by considering the maximum distance of boundary pixels from centroid. The sign is further classified into its sub-group according to its shape. The minimum Euclidean distance classifier is used to detect the shape of sign. Perceptron Neural Network (NN) is employed to recognize the classified sign. Results show that the developed algorithm has color classification rate of 100% while shape classification rate about 98% when tested on several outdoor images for traffic sign detection. The overall recognition rate of the developed algorithm is observed around 92%.
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