论文标题

自动驾驶汽车的新兴视觉传感器

Emergent Visual Sensors for Autonomous Vehicles

论文作者

Li, You, Moreau, Julien, Ibanez-Guzman, Javier

论文摘要

自动驾驶汽车依靠感知系统来了解其周围的行驶任务。由于与其他传感器(例如激光雷达和雷达)相比,相比,相机的对象检测和识别的优势,相机对于感知系统至关重要。但是,受其固有成像原理的限制,标准的RGB摄像机在各种不良情况下的性能可能会差,包括但不限于:低照明,高对比度,诸如雾/雨/雪等恶劣天气等。与此同时,与Lidars相比,估计2D图像检测的3D信息通常更加困难。近年来,已经出现了几种新的传感技术来解决常规RGB摄像机的局限性。在本文中,我们回顾了四个新型图像传感器的原理:红外摄像机,射程门控相机,极化摄像机和事件摄像机。它们的比较优势,现有或潜在的应用程序以及相应的数据处理算法都以系统的方式介绍。我们希望这项研究将通过新的观点和见解为自主驾驶社会的从业者提供帮助。

Autonomous vehicles rely on perception systems to understand their surroundings for further navigation missions. Cameras are essential for perception systems due to the advantages of object detection and recognition provided by modern computer vision algorithms, comparing to other sensors, such as LiDARs and radars. However, limited by its inherent imaging principle, a standard RGB camera may perform poorly in a variety of adverse scenarios, including but not limited to: low illumination, high contrast, bad weather such as fog/rain/snow, etc. Meanwhile, estimating the 3D information from the 2D image detection is generally more difficult when compared to LiDARs or radars. Several new sensing technologies have emerged in recent years to address the limitations of conventional RGB cameras. In this paper, we review the principles of four novel image sensors: infrared cameras, range-gated cameras, polarization cameras, and event cameras. Their comparative advantages, existing or potential applications, and corresponding data processing algorithms are all presented in a systematic manner. We expect that this study will assist practitioners in the autonomous driving society with new perspectives and insights.

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