Research on the Design of Lane Line Recognition and Deviation Warning System Based on Machine Vision

2026-99-0566

To be published on 07/10/2026

Authors
Abstract
Content
In order to reduce traffic accidents caused by cars straying from lanes, a lane line recognition and deviation warning system based on machine vision is designed. It mainly includes image preprocessing, lane line detection, and the design of a deviation warning model. “In this study, an ROS-based intelligent vehicle-mounted camera is adopted for road image collection. To reduce the computational load of data processing while guaranteeing the algorithm’s accuracy and reliability, grayscale conversion and region of interest (ROI) extraction are implemented to finish the image preprocessing stage. Additionally, a fusion strategy of global and local thresholds is introduced to enhance both the operational speed and detection accuracy of the algorithm” use the Canny operator for the edge feature extraction; and complete the fitted lane lines with the improved Hough transform. Finally, based on the Kalman filter and camera viewpoint conversion coefficient algorithm, the lane line offset is detected in real time, and the deviation is judged in combination with the monitoring interface. Simulation experiments show that the system is able to effectively recognize the lane line and judge the deviation status under the condition of setting the offset threshold of 70 pixels, which significantly improves the accuracy and real-time performance of the lane deviation warning and provides effective technical support for reducing traffic accidents.
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Citation
Wang, X., Zhang, C., Wang, Y., Chen, Y., et al., "Research on the Design of Lane Line Recognition and Deviation Warning System Based on Machine Vision," The 1st International Academic Conference on Intelligent Transportation and Low-Altitude Transport (ITLAT2025), Nantong, China, June 20, 2025, .
Additional Details
Publisher
Published
To be published on Jul 10, 2026
Product Code
2026-99-0566
Content Type
Technical Paper
Language
English