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A Model of Traffic signs Recognition with Convolutional Neural Network

机译:卷积神经网络交通标志识别模型

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In real traffic scenes, the quality of captured images are generally low due to some factors such as lighting conditions, and occlusion on. All of these factors are challengeable for automated recognition algorithms of traffic signs. Deep learning has provided a new way to solve this kind of problems recently. The deep network can automatically learn features from a large number of data samples and obtain an excellent recognition performance. We therefore approach this task of recognition of traffic signs as a general vision problem, with few assumptions related to road signs. We propose a model of Convolutional Neural Network (CNN) and apply the model to the task of traffic signs recognition. The proposed model adopts deep CNN as the supervised learning model, directly takes the collected traffic signs image as the input, alternates the convolutional layer and subsampling layer, and automatically extracts the features for the recognition of the traffic signs images. The proposed model includes an input layer, three convolutional layers, three subsampling layers, a fully-connected layer, and an output layer. To validate the proposed model, the experiments are implemented using the public dataset of China competition of fuzzy image processing. Experimental results show that the proposed model produces a recognition accuracy of 99.01 % on the training dataset, and yield a record of 92% on the preliminary contest within the fourth best.
机译:在实际交通场景中,由于诸如照明条件等一些因素和遮挡的因素,捕获图像的质量通常很低。所有这些因素都是有挑战性的交通标志的自动识别算法。深度学习为最近提供了一种解决这种问题的新方法。深网络可以从大量数据样本自动学习功能,并获得出色的识别性能。因此,我们将对交通标志的识别作为一般视觉问题的任务,少数与道路标志有关。我们提出了一种卷积神经网络(CNN)的模型,并将模型应用于交通标志识别的任务。该建议的模型作为监督学习模型的深度CNN,直接接受收集的流量标志图像作为输入,替代卷积层和子采样层,并自动提取用于识别交通标志图像的特征。所提出的模型包括输入层,三个卷积层,三个子采样层,完全连接层和输出层。为了验证所提出的模型,使用中国竞争的模糊图像处理的公共数据集实施实验。实验结果表明,拟议的模型在训练数据集中产生了99.01%的识别准确性,并在第四次最佳初步比赛中产生92%的记录。

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