This paper presents a method for detection and recognition of traffic signs based on information extracted from an event camera. The solution used a FireNet deep convolutional neural network to reconstruct events into greyscale frames. Two YOLOv4 network models were trained, one based on greyscale images and the other on colour images. The best result was achieved for the model trained on the basis of greyscale images, achieving an efficiency of 87.03%.
翻译:本文介绍了根据从事件相机中提取的信息探测和识别交通信号的方法,解决方案使用FireNet深层进化神经网络将事件重建为灰度框架,培训了两个YOLOv4网络模型,一个以灰度图像为基础,另一个以彩色图像为基础,在灰度图像基础上培训的模式取得了最佳成果,实现了87.03%的效率。