基于车载摄像头的红绿灯和人行横道检测与定位

S. Wangsiripitak, Keisuke Hano, S. Kuchii
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引用次数: 1

摘要

提出了一种改进的卷积神经网络模型,利用车载摄像头的视觉信息对红绿灯和人行横道进行检测和定位。Yolov4 darknet及其预训练模型用于迁移学习,使用我们的交通灯和人行横道数据集;训练后的模型用于检测前车的闯红灯。实验结果表明,与仅从Microsoft COCO数据集学习的预训练模型的结果相比,我们在各种光照条件和干扰下拍摄的测试图像上的交通灯检测性能有所提高;召回率提高36.91%,假阳性率降低39.21%。在COCO模型中无法检测到的人行横道,其召回率为93.37%,假阳性率为7.74%。
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Traffic Light and Crosswalk Detection and Localization Using Vehicular Camera
An improved convolutional neural network model for traffic light and crosswalk detection and localization using visual information from a vehicular camera is proposed. Yolov4 darknet and its pretrained model are used in transfer learning using our datasets of traffic lights and crosswalks; the trained model is supposed to be used for red-light running detection of the preceding vehicle. Experimental results, compared to the result of the pretrained model learned only from the Microsoft COCO dataset, showed an improved performance of traffic light detection on our test images which were taken under various lighting conditions and interferences; 36.91% higher recall and 39.21% less false positive rate. The crosswalk, which is incapable of detection in the COCO model, could be detected with 93.37% recall and 7.74% false-positive rate.
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