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A Real-Time Vehicle Traffic Light Detection Algorithm Based on Modified YOLOv3

机译:基于修改YOLOV3的实时车辆交通灯检测算法

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Aiming at the problems of low recognition rate and high missed detection rate in deep learning algorithms for detecting traffic lights, as well as the scarcity of traffic light datasets in China. A real-time traffic light detection and recognition method based on the improved YOLOv3 algorithm is proposed. Firstly, the linear scale scaling method is used to optimize the aspect ratio of the prior box generated by K-means clustering, and the clustering result is linearly calculated to obtain a suitable anchor box size. Then, the improved Mosaic approach is used to enhance the traffic light dataset. Finally, in order to reduce the repeated feature extraction of the image by the convolutional neural network, a SPP block is added after the backbone network, and a 4 stride up-sampling layer is added to better integrate high-level semantic information and shallow location information. At the same time, the number of convolutional layers in the neck part is reduced, and the model structure is simplified. Experimental results show that the proposed approach achieves higher accuracy on both the Lara dataset and the Chongqing traffic light dataset (CQTLD), compared with YOLOv3 approach. The detection speed is increased by 11.8%, and mean Average Precision (mAP) is increased by 3.78% on CQTLD.
机译:旨在瞄准低识别率和深度学习算法中的高错检测率的问题,用于检测交通灯,以及中国交通灯数据集的稀缺。提出了一种基于改进的YOLOV3算法的实时业务光检测和识别方法。首先,线性比例缩放方法用于优化由k-means聚类生成的先前框的纵横比,并且线性地计算聚类结果以获得合适的锚箱尺寸。然后,改进的马赛克方法用于增强交通灯数据集。最后,为了减少卷积神经网络的图像的重复特征提取,在骨干网后添加SPP块,并添加4个升序上采样层以更好地集成高电平的语义信息和浅位置信息。同时,颈部中的卷积层的数量减小,简化了模型结构。实验结果表明,与Yolov3方法相比,该拟议方法在劳拉数据集和重庆交通灯数据集(CQTLD)上实现了更高的准确性。检测速度增加11.8%,平均平均精度(MAP)在CQTLD上增加了3.78%。

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