KOREASCHOLAR

컨벌루션 신경망을 사용한 다중 차선 인식 Multi-lanes Detection using Convolutional Neural Network

박희문, 황광복, 배준경, 박진현
  • 언어KOR
  • URLhttp://db.koreascholar.com/Article/Detail/414634
한국기계기술학회지 (韓國機械技術學會誌)
제24권 제2호 (2022.04)
pp.288-295
한국기계기술학회 (Korean Society of Mechanical Technology)
초록

In this study, the multi-lane detection problem is expressed as a CNN-based regression problem, and the lane boundary coordinates are selected as outputs. In addition, we described lanes as fifth-order polynomials and distinguished the ego lane and the side lanes so that we could make the prediction lanes accurately. By eliminating the network branch arrangement and the lane boundary coordinate vector outside the image proposed by Chougule’s method, it was possible to eradicate meaningless data learning in CNN and increase the fast training and performance speed. And we confirmed that the average prediction error was small in the performance evaluation even though the proposed method compared with Chougule’s method under harsher conditions. In addition, even in a specific image with many errors, the predicted lanes did not deviate significantly, meaningful results were derived, and we confirmed robust performance.

저자
  • 박희문(경상국립대학교) | Hee-Mun Park
  • 황광복(경상국립대학교)
  • 배준경(경상국립대학교) | Junkyung Bae
  • 박진현(경상국립대학교) | Park Jin-Hyun Corresponding author