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Improved Real-Time Traffic Obstacle Detection and Classification Method Applied in Intelligent and Connected Vehicles in Mixed Traffic Environment

Authors :
Du, Luyao
Chen, Xiongjie
Pei, Zhonghui
Zhang, Donghua
Liu, Bo
Chen, Wei
Source :
Journal of Advanced Transportation. April 7, 2022, Vol. 2022
Publication Year :
2022

Abstract

Mixed traffic is a common phenomenon in urban environment. For the mixed traffic situation, the detection of traffic obstacles, including motor vehicle, non-motor vehicle, and pedestrian, is an essential task for intelligent and connected vehicles (ICVs). In this paper, an improved YOLO model is proposed for traffic obstacle detection and classification. The YOLO network is used to accurately detect the traffic obstacles, while the Wasserstein distance-based loss is used to improve the misclassification in the detection that may cause serious consequences. A new established dataset containing four types of traffic obstacles including vehicles, bikes, riders, and pedestrians is collected under different time periods and different weather conditions in urban environment in Wuhan, China. Experiments are performed on the established dataset on Windows PC and NVIDIA TX2, respectively. From the experimental results, the improved YOLO model has higher mean average precision than the original YOLO model and can effectively reduce intolerable misclassifications. In addition, the improved YOLOv4-tiny model has a detection speed of 22.5928fps on NVIDIA TX2, which can basically realize the real-time detection of traffic obstacles.<br />Author(s): Luyao Du [1]; Xiongjie Chen [2]; Zhonghui Pei [3]; Donghua Zhang [4]; Bo Liu [4]; Wei Chen (corresponding author) [1] 1. Introduction Traffic conditions in urban societies can be [...]

Subjects

Subjects :
China

Details

Language :
English
ISSN :
01976729
Volume :
2022
Database :
Gale General OneFile
Journal :
Journal of Advanced Transportation
Publication Type :
Academic Journal
Accession number :
edsgcl.700760830
Full Text :
https://doi.org/10.1155/2022/2259113