基于 U-Net 的增强型车道检测学习与恶劣环境下的定向车道 ROIs

Seunghyon Lee, Sung-Hak Lee
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引用次数: 0

摘要

人工智能技术的最新进展推动了自动驾驶汽车领域的广泛研究。人工智能在车道检测中的应用有效地解决了以往传统技术难以克服的挑战。本文减少了学习所需的 U-Net 参数数量,以实现更快的处理速度。此外,它还生成了方向边缘图像,并将其纳入训练,以便在行驶过程中优先进行车道检测。为了确保即使在弱光等不利条件下也能进行稳定的检测,本文采用了双侧滤波器来抑制噪声,并使用 MSR(多尺度视网膜)来增加图像的对比度。与简单的 U-Net 或 3 通道方法相比,所提出的方法具有更高的稳定性、更快的学习速度和更优越的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
U-Net Based Enhanced Lane Detection Learning With Directional Lane ROIs for Harsh Environments
Recent advancements in artificial intelligence technology have propelled extensive research in the field of autonomous driving vehicles. Artificial intelligence's application in lane detection has effectively addressed challenges that were previously difficult to overcome with conventional techniques. This paper reduced the number of U-Net parameters required for learning to achieve faster processing. Additionally, it generates directional Edge images and incorporates them into the training to prioritize lane detection during ongoing driving. To ensure stable detection even in adverse conditions such as low-light situations, it employs a Bilateral Filter to suppress noise and increases the image's contrast using MSR (Multi Scale Retinex). The proposed method demonstrates greater stability, faster learning, and superior results compared to simple U-Net or 3-channel approaches.
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