基于多光信息融合的低照度车道检测

Wenbo Zhao, Wei Tian, Yi Han, Xianwang Yu
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引用次数: 0

摘要

基于视觉传感器的车道检测对于智能汽车的环境感知具有重要意义。目前成熟的车道检测算法都是在良好的视觉条件下训练和实现的。然而,夜间等弱光环境更为复杂,容易导致误检测甚至感知失败,这不利于自我车辆的行为决策和控制等下游任务。为了解决这个问题,我们提出了一种新的车道检测算法,该算法将多光信息引入到车道检测任务中。该算法采用多曝光图像处理模块,从源图像数据中生成并融合多曝光信息。通过集成该模块,主流车道检测模型可以共同学习车道特征的提取和低曝光图像的增强,从而提高夜间车道检测的性能和鲁棒性。
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Low-Illumination Lane Detection by Fusion of Multi-light Information
Lane detection based on the visual sensor is of great significance for the environmental perception of the intelligent vehicle. Current mature lane detection algorithms are trained and implemented in good visual conditions. However, the low-light environment such as in the night is much more complex, easily causing misdetections and even perception failures, which are harmful to the downstream tasks such as behavior decision and control of ego-vehicle. To tackle this problem, we propose a new lane detection algorithm that introduces the multi-light information into lane detection task. The proposed algorithm adopts a multi-exposure image processing module, which generates and fuses multi-exposure information from the source image data. By integrating this module, mainstream lane detection models can jointly learn the extraction of lane features as well as the enhancement of low-exposed image, thus improving both the performance and robustness of lane detection in the night.
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