Abstract

Traffic surveillance can be used to monitor and collect the traffic condition data of road networks, which plays an important role in a wide range of applications in intelligent transportation systems (ITSs). Accurately and rapidly detecting and counting vehicles in traffic videos is one of the main problems of traffic surveillance. Traditional video-based vehicle detection methods, such as background subtraction, frame difference, and optical flow have some limitations in accuracy or efficiency. In this paper, deep learning is applied for vehicle counting in traffic videos. First, to solve the problem of the lack of annotated data, a method for vehicle detection based on transfer learning is proposed. Then, based on vehicle detection, a vehicle counting method based on fusing the virtual detection area and vehicle tracking is proposed. Finally, due to possible situations of missing detection and false detection, a missing alarm suppression module and a false alarm suppression module are designed to improve the accuracy of vehicle counting. The results show that the proposed deep learning vehicle counting framework can achieve lane-level vehicle counting without enough annotated data, and the accuracy of vehicle counting can reach up to 99%. In terms of computational efficiency, this method has high real-time performance and can be used for real-time vehicle counting.

Highlights

  • The rapid growth of the urban population and motor vehicles has led to a series of traffic problems

  • In the vehicle counting stage, on the basis of vehicle bounding boxes obtained from vehicle detection, a new method of vehicle counting based on fusing virtual detection area and vehicle tracking is proposed, which considers the possible situation of missing detection and false detection, while combining the ideas of the traditional vehicle counting method based on virtual detection area and vehicle tracking

  • 21.0 detection area and vehicle tracking can avoid the errors caused by missing detection and false detection, which further improves the accuracy of vehicle counting, the accuracy of vehicle detection is not very high

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Summary

A Deep Learning Framework for Video-Based Vehicle Counting

Haojia Lin 1,2, Zhilu Yuan 2, Biao He 2,3,4, Xi Kuai 2, Xiaoming Li 2 and Renzhong Guo 1,2*. Guo R (2022) A Deep Learning Framework for Video-Based Vehicle Counting. And rapidly detecting and counting vehicles in traffic videos is one of the main problems of traffic surveillance. Traditional video-based vehicle detection methods, such as background subtraction, frame difference, and optical flow have some limitations in accuracy or efficiency. Deep learning is applied for vehicle counting in traffic videos. To solve the problem of the lack of annotated data, a method for vehicle detection based on transfer learning is proposed. Based on vehicle detection, a vehicle counting method based on fusing the virtual detection area and vehicle tracking is proposed. The results show that the proposed deep learning vehicle counting framework can achieve lane-level vehicle counting without enough annotated data, and the accuracy of vehicle counting can reach up to 99%.

INTRODUCTION
Deep Learning Object Detection
Transfer Learning
Transfer Learning Based on YOLO
Virtual Detection Area and Vehicle Counting
Missing Detection and False Detection
The Missing Alarm Suppression Module Based on Vehicle Tracking
The False Alarm Suppression Module Based on Bounding Box Size Statistics
Vehicle Number Calculation
EXPERIMENTS
The Effectiveness of the Supplemental Dataset
The Generalization of Vehicle Counting
The Effectiveness of Transfer Learning
The Robustness of Vehicle Counting
CONCLUSION AND FUTURE WORK
DATA AVAILABILITY STATEMENT
Findings
Background
Full Text
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