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Implementation of Preceding Vehicle Break-Lamp Detection System using Selective Attention Model and YOLO  

Lee, Woo-Beom (Department of Information and Communication Software Engineering, Sangji University)
Publication Information
Journal of the Institute of Convergence Signal Processing / v.22, no.2, 2021 , pp. 85-90 More about this Journal
Abstract
A ADAS(Advanced Driver Assistance System) for the safe driving is an important area in autonumous car. Specially, a ADAS software using an image sensors attached in previous car is low in building cost, and utilizes for various purpose. A algorithm for detecting the break-lamp from the tail-lamp of preceding vehicle is proposed in this paper. This method can perceive the driving condition of preceding vehicle. Proposed method uses the YOLO techinicque that has a excellent performance in object tracing from real scene, and extracts the intensity variable region of break-lamp from HSV image of detected vehicle ROI(Region Of Interest). After detecting the candidate region of break-lamp, each isolated region is labeled. The break-lamp region is detected finally by using the proposed selective-attention model that percieves the shape-similarity of labeled candidate region. In order to evaluate the performance of the preceding vehicle break-lamp detection system implemented in this paper, we applied our system to the various driving images. As a results, implemented system showed successful results.
Keywords
ADAS(Advancd Driver Assistance System); YOLO; Vehicle Break-lamp; Visual Selective-attention model; Shape-similarity;
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