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Vehicular Color Recognition with Dynamic and Complex Environment Based on WRCNN

机译:基于WRCNN的动态和复杂环境的车辆颜色识别

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Vehicular color recognition is a challenging problem since the change of light conditions, the interference of background color and difference subjective perceptions in dynamic complex environments. This paper proposes a method closing to the subjective cognitive model of human vision systems for vehicle color recognition. Firstly, a Spatial-Color (SC) normalized method is designed to extract the main color of vehicle images. Secondly, a novel Wide Residual Convolution Neural Network (WRCNN) is proposed to extract the global features, and the output is provided by a fully connected layer. Finally, A softmax classifier is used. Compared with those traditional color classification methods in which the color-spatial objective distance is calculated, the proposed method is more effective. Compared with AlexNet and VGG, our method decreases error rate by using deeper networks and residual structures, it also optimizes the constringency of networks. Experimental results show that, the training accuracy rate can reach 99.12% with 30, 000 training and 3, 600 testing images. The proposed method satisfies with practical real-time applications.
机译:自光状况的变化,在动态复杂环境中的差异主观看法的变化以来,车辆颜色识别是一个具有挑战性的问题。本文提出了对车辆颜色识别人体视觉系统的主观认知模型的方法。首先,设计空间 - 颜色(SC)归一化方法以提取车辆图像的主要颜色。其次,提出了一种新颖的宽残余卷积神经网络(WRCNN)来提取全局特征,并且输出由完全连接的层提供。最后,使用Softmax分类器。与计算颜色空间物镜距离的那些传统的颜色分类方法相比,所提出的方法更有效。与AlexNet和VGG相比,我们的方法通过使用更深的网络和残差结构来降低错误率,它还优化了网络的收音机。实验结果表明,训练精度率可以达到99.12 %,30,000次训练和3,600检测图像。所提出的方法满足实际实时应用。

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