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Integrating visual selective attention model with HOG features for traffic light detection and recognition

机译:将视觉选择性注意模型与HOG功能集成在一起,以进行交通灯检测和识别

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Traffic light detection and recognition play a more important role in Advanced Driver Assistance Systems and driverless cars. This paper presents a method of integrating Visual Selective Attention (VSA) model with HOG features to solve the problem of detecting and recognizing traffic lights in complex urban environment. First of all, the VSA model is used to get candidate regions of the traffic lights. Then, the HOG features of the traffic lights and SVM classifier are used in these candidate regions to get precise regions of traffic lights. Within these regions, the color of traffic light is recognized according to the information in the gray-scale image of channel A. Experimental results show that the proposed method has strong robustness and high accuracy.
机译:红绿灯检测和识别在先进的驾驶员辅助系统和无人驾驶汽车中起着更重要的作用。本文介绍了一种用猪特征集成视觉选择性关注(VSA)模型来解决复杂城市环境中检测和识别交通灯的问题。首先,VSA模型用于获得红绿灯的候选区域。然后,在这些候选区域中使用了交通灯和SVM分类器的猪特征,以获得交通灯的精确区域。在这些区域内,交通灯的颜色根据信道A的灰度图像中的信息来识别。实验结果表明,该方法具有强大的鲁棒性和高精度。

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