Deep Learning-Based Vehicle Type Detection and Classification

N. Pethiyagoda, Mwp Maduranga, D. Kulasekara, Tl Weerawardane
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Abstract

Modern intelligent transportation systems heavily rely on vehicle-type classification technology. Deep learning-based vehicle-type categorization technology has sparked growing concern as image processing, pattern recognition, and deep learning have all advanced. Over the past few years, convolutional neural work, in particular You Only Look Once (YOLO), has shown to have considerable advantages in object detection and image classification. This method speeds up detection because it can predict objects in real time. High accuracy: The YOLO prediction method produces accurate results with low background errors. YOLO also understands generalized object representation. This approach, which is among the best at object detection, outperforms R-CNN approaches by a wide margin. In this paper, YOLOv5 is used to demonstrate vehicle type detection; the YOLOv5m model was chosen since it suits mobile deployments, the model was trained with a dataset of 3000 images, where 500 images were allocated for each class with a variety of vehicles. Hyperparameter tuning was applied to optimize the model for better prediction and accuracy. Experimental results for a batch size of 32 trained for 300 epochs show a precision of 98.2%, recall of 94.9%, mAP@.5 of 97.9%, mAP@.5:.95 of 92.8%, and overall accuracy of 95.3% trained and tested on four vehicle classes.
基于深度学习的车辆类型检测与分类
现代智能交通系统在很大程度上依赖于车型分类技术。随着图像处理、模式识别和深度学习的发展,基于深度学习的车型分类技术引起了越来越多的关注。在过去的几年里,卷积神经工作,特别是你只看一次(YOLO),已经显示出在目标检测和图像分类方面具有相当大的优势。这种方法可以实时预测物体,从而加快了检测速度。准确度高:YOLO预测方法结果准确,背景误差小。YOLO还理解广义对象表示。这种方法在目标检测方面是最好的,在很大程度上优于R-CNN方法。本文使用YOLOv5演示车型检测;选择了YOLOv5m模型,因为它适合移动部署,该模型使用3000张图像的数据集进行训练,其中500张图像分配给具有各种车辆的每个类别。采用超参数整定对模型进行优化,提高预测精度。实验结果表明,在批大小为32的情况下,300 epoch的训练精度为98.2%,召回率为94.9%,mAP@.97.9%中的5个,mAP@.5:。在四种车辆类别上进行训练和测试,总体准确率为95.3%。
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