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CTL-DNNet: Effective Circular Traffic Light Recognition with a Deep Neural Network

机译:CTL-DNNet:具有深度神经网络的有效环形交通信号灯识别

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This paper proposed an algorithm for a deep learning network for identifying circular traffic lights (CTL-DNNet). The sample labeling process uses translation to increase the number of positive samples, and the similarity is calculated to reduce the number of negative samples, thereby reducing over fitting. We use a dataset of approximately 370 000 samples, with approximately 20 000 positive samples and approximately 350 000 negative samples. The datasets are generated from images taken at the Beijing Garden Expo. To obtain a very robust method for the detection of traffic lights, we use different layers, different cost functions and different activation functions of the depth neural network for training and comparison. Our algorithm has evaluated autonomous vehicles in varying illumination and gets the result with high accuracy and robustness. The experimental results show that CTL-DNNet is effective at recognizing road traffic lights in the Beijing Garden Expo area.
机译:本文提出了一种用于识别环形交通信号灯的深度学习网络算法(CTL-DNNet)。样品标记过程使用翻译来增加阳性样品的数量,并计算相似度以减少阴性样品的数量,从而减少过度拟合。我们使用大约370 000个样本,大约20000个阳性样本和大约35万个阴性样本的数据集。这些数据集是从北京花园博览会上拍摄的图像生成的。为了获得一种非常强大的交通信号灯检测方法,我们使用深度神经网络的不同层,不同成本函数和不同激活函数进行训练和比较。我们的算法在变化的照明条件下评估了自动驾驶汽车,并以高精度和鲁棒性获得了结果。实验结果表明,CTL-DNNet能够有效识别北京花园博览区的道路交通信号灯。

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