Detecting vehicles in the dark in urban environments - A human benchmark

Lukas Ewecker, Ebubekir Asan, Stefan Roos
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引用次数: 3

Abstract

When developing autonomous or automated driving functions, having a sound understanding of the environment is critical. The earlier and the more detailed the environment is recognized, the more precise the vehicle can plan future actions. One major component in the field of autonomous driving, therefore, is visual perception. Cameras deliver consecutive images of the world, and computer vision algorithms attempt to extract the relevant information, for example, detecting other road users such as vehicles. However, current automated driving functions share the limitation of relying on the object to be directly visible to be detected. On the other side, humans intuitively use other visual effects to draw assumptions about objects that are not yet directly visible. Such effects can be shadows during the day or light reflections during the night. Recent work has already shown the potential of using this information when driving at night on highways. Highways at night thereby are easy ground: The traffic volume is considerably low, and the surrounding environment is mainly dark (e. g., there are no street lamps causing other light sources or reflections). This paper takes the research on this topic a step further and brings light to the question to which extent this effect of detecting oncoming vehicles at night can also be used in cities. We present a comprehensive analysis of human behavior when detecting other road users at night in urban areas while driving. The data was gathered throughout a test group study in two medium-sized German cities under various weather and traffic conditions. We prove the importance of light reflections when driving through urban areas at night and provide a solid human benchmark to compare future perception algorithms’ performance.
在黑暗的城市环境中探测车辆——人类的基准
在开发自动驾驶或自动驾驶功能时,对环境的充分了解至关重要。对环境的识别越早、越详细,车辆就能越精确地规划未来的行动。因此,自动驾驶领域的一个主要组成部分是视觉感知。摄像头提供世界的连续图像,计算机视觉算法试图提取相关信息,例如,检测其他道路使用者,如车辆。然而,目前的自动驾驶功能都存在依赖于直接可见的物体来检测的局限性。另一方面,人类本能地使用其他视觉效果来绘制尚未直接可见的物体的假设。这种效果可以是白天的阴影或夜间的光反射。最近的工作已经显示了夜间在高速公路上驾驶时使用这些信息的潜力。因此,夜间的高速公路是容易的地面:交通量相当低,周围环境主要是黑暗的(例如,没有路灯造成其他光源或反射)。本文将这一课题的研究推进了一步,并揭示了在多大程度上这种夜间检测迎面而来车辆的效果也可以在城市中使用的问题。我们提出了一个全面的人类行为分析,当发现其他道路使用者在夜间在城市地区,同时驾驶。这些数据是在德国两个中型城市的不同天气和交通状况下进行的测试组研究中收集的。我们证明了夜间在城市地区行驶时光反射的重要性,并为比较未来感知算法的性能提供了坚实的人类基准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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