Vision-Based Robust Lane Detection and Tracking under Different Challenging Environmental Conditions
Samia Sultana, Boshir Ahmed, Manoranjan Paul, Muhammad Rafiqul Islam, and Shamim Ahmad

TL;DR
This paper presents a robust lane detection and tracking method that effectively handles challenging environmental conditions like low visibility, occlusion, and confusing lane lines, achieving high detection accuracy and real-time performance.
Contribution
The paper introduces a novel comprehensive intensity threshold, a two-step lane verification technique, and a dynamic lane tracking method to improve robustness under adverse conditions.
Findings
Detection rate of 97.55% on benchmark datasets.
Average processing time of 22.33 ms per frame.
Outperforms existing state-of-the-art methods.
Abstract
Lane marking detection is fundamental for both advanced driving assistance systems. However, detecting lane is highly challenging when the visibility of a road lane marking is low due to real-life challenging environment and adverse weather. Most of the lane detection methods suffer from four types of challenges: (i) light effects i.e., shadow, glare of light, reflection etc.; (ii) Obscured visibility of eroded, blurred, colored and cracked lane caused by natural disasters and adverse weather; (iii) lane marking occlusion by different objects from surroundings (wiper, vehicles etc.); and (iv) presence of confusing lane like lines inside the lane view e.g., guardrails, pavement marking, road divider etc. Here, we propose a robust lane detection and tracking method with three key technologies. First, we introduce a comprehensive intensity threshold range (CITR) to improve the performance…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Advanced Neural Network Applications · Image and Object Detection Techniques
