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Improving Vehicle Classification and Detection with Deep Neural Networks

机译:用深神经网络改善车辆分类和检测

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Vehicle detection and classification are major functions of advanced driver assistance systems (ADAS). In this paper, a deep-learning approach for vehicle detection and classification is discussed and improved. More specifically, we utilized the state of the art object detection model “YOLOV4” with a clear focus on vehicles which made the detection process more robust. We conducted real life tests on vehicle images from Egypt at El-Sahil bridge, Imbaba and El-Hussary where our improved model detects the vehicles reliably. Our approach mainly relied on using ResNet50 and VGG16 as a classification backbones for YOLOv4, we used the GTI dataset to train and fine tune both networks to get the one with the better classification accuracy. The mean average precision (MAP) increased by 6.7% for VGG (84.49% to 91.02%) and 7.35% for ResNet (85.3% to 92.653%) then we trained YOLOv4 using OpenImages and Highway data sets for vehicle detection reaching an improvement of nearly 6.3% MAP (86.5% to 92.82%).
机译:车辆检测和分类是先进驾驶员辅助系统(ADA)的主要功能。本文讨论和改进了一种用于车辆检测和分类的深度学习方法。更具体地,我们利用了现有的物体检测模型“YOLOV4”的状态,并在车辆上进行了清晰的重点,使得检测过程更加坚固。我们在El-Sahil Bridge,Imbaba和El-Hussary在埃及的车辆图像上进行了现实生活测试,我们改进的模型可靠地检测车辆。我们的方法主要依赖于使用Reset50和VGG16作为YOLOV4的分类骨干,我们使用GTI数据集培训和微调两个网络,以获得更好的分类准确性。平均平均精度(MAP)对于VGG增加了6.7%(84.49%至91.02%),resnet的7.35% 6.3%地图(86.5%至92.82%)。

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