Review on lane detection and related methods

Weiyu Hao
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Abstract

Road detection remains a captivating and crucial aspect of any form of autonomous driving. In this manuscript, we furnish a comprehensive appraisal of recent advancements in road lane detection, a fundamental component integral to autonomous driving. Despite numerous methodologies being proposed to augment accuracy while expediting speed, various hindrances, including lane marking variations, lighting fluctuations, and shadowy conditions, necessitate the establishment of dependable detection systems. Model-based and learning-based methods represent the two predominant techniques for lane detection. Model-based methods afford rapid computation speeds, while learning-based methods extend robustness amidst complexity. This paper delves into the techniques of lane detection and forecasts upcoming trends in the field. Collectively, this review offers a sturdy foundation for prospective research in the realm of road lane detection.

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车道检测及相关方法综述
道路检测仍然是任何形式的自动驾驶的一个迷人而关键的方面。在这份手稿中,我们对道路车道检测的最新进展进行了全面评估,道路车道检测是自动驾驶不可或缺的基本组成部分。尽管提出了许多方法来提高准确性,同时加快速度,但各种障碍,包括车道标线变化、照明波动和阴影条件,都需要建立可靠的检测系统。基于模型和基于学习的方法代表了车道检测的两种主要技术。基于模型的方法提供了快速的计算速度,而基于学习的方法在复杂性中扩展了鲁棒性。本文深入研究了车道检测技术,并预测了该领域即将出现的趋势。总之,这篇综述为道路车道检测领域的前瞻性研究奠定了坚实的基础。
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