Real-Time Vehicle Counting by Deep-Learning Networks

Chun-Ming Tsai, F. Shih, J. Hsieh
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Abstract

In order to improve the driving safety and reduce traffic congestion during holidays and work hours, a real-time vehicle detection and counting system is a very urgently needed system. In this paper, a lane-based vehicle counting system using deep-learning networks is proposed. Our method includes YOLO vehicle detection and lane-based vehicle counting. From the vehicle detection experimental results, YOLOv3-spp has the highest Precision, Recall, and F1 score, which achieve all 100% among three YOLOv3 methods and two YOLOv2 methods. From the vehicle counting experimental results, YOLOv3-608 has the highest Accuracy, Precision and F1 scores, which achieve 91.4%, 99.3%, and 95.3% among three YOLOv3 methods, two YOLOv2 methods, and one SSD method.
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基于深度学习网络的实时车辆计数
为了提高行车安全性,减少节假日和工作日的交通拥堵,车辆实时检测和计数系统是一个非常迫切需要的系统。本文提出了一种基于深度学习网络的车道车辆计数系统。我们的方法包括YOLO车辆检测和基于车道的车辆计数。从车辆检测实验结果来看,YOLOv3-spp的Precision、Recall和F1得分最高,在3种YOLOv3方法和2种YOLOv2方法中均达到100%。从车辆计数实验结果来看,在3种YOLOv3方法、2种YOLOv2方法和1种SSD方法中,YOLOv3-608的准确率、精密度和F1分数最高,分别达到91.4%、99.3%和95.3%。
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