Traffic Light Recognition in Autonomous Driving: Comparison of YOLOv7 and CenterNet2 with HSV Post-Processing

  • Kim, Dayoung
  • Li, Xingyou
  • Abdigapporov, Shakhboz
  • Miraliev, Shokhrukh
  • Kim, Hyoungrae
  • ... Kim, Hakil
Citations

SCOPUS

1

초록

Advanced deep learning networks, such as the YOLO series have been widely utilized for traffic light recognition tasks. However, existing models, overlook the issues of additional noise caused by the external environment(e.g., signal lights of the vehicles on the road, lights on the side of the road etc.) in the real-world. This study aims to fill this research gap by applying hue-saturation-value(HSV) post-processing technique to the two of the most popular traffic light recognition models YOLOv7 and CenterNet2 and compare the results before and after the usage of the applied technique. After evaluations, the implemented post-processing method showed effectiveness in correctly classifying the detected traffic light signals, resulting in improved overall mAP results from 82.6% to 90.1 % for the YOLOv7 model and from 83.5% to 91.8% for the CenterNet2 model. © 2023 ICROS.

키워드

autonomous drivingdeep learningHSV post-processingTraffic light recognition
제목
Traffic Light Recognition in Autonomous Driving: Comparison of YOLOv7 and CenterNet2 with HSV Post-Processing
저자
Kim, DayoungLi, XingyouAbdigapporov, ShakhbozMiraliev, ShokhrukhKim, HyoungraeKim, Hakil
DOI
10.23919/ICCAS59377.2023.10317045
발행일
2023
유형
Conference paper
저널명
International Conference on Control, Automation and Systems
페이지
1931 ~ 1936