数据集和基准:用于自动驾驶车辆感知的新型传感器

Spencer Carmichael, Austin Buchan, Mani Ramanagopal, Radhika Ravi, Ram Vasudevan, Katherine A Skinner
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摘要

自动驾驶汽车(AV)系统中使用的传统摄像头可支持许多感知任务,但在低照度或高动态范围场景、恶劣天气和快速运动时却面临挑战。新型传感器,如事件和热像仪,具有解决这些问题的潜力,但仍有待充分利用。本文介绍了用于自主车辆感知的新型传感器(NSAVP)数据集,以促进未来对这一主题的研究。该数据集由一个平台采集,该平台包括立体事件、热敏、单色和 RGB 摄像机以及提供地面实况姿势的高精度导航系统。数据是通过重复驾驶两条 8 公里长的路线收集的,包括不同的照明条件和不同的视角。我们提供了地点识别任务的基准实验,以展示新型传感器在增强关键视听感知任务方面所面临的挑战和机遇。据我们所知,NSAVP 数据集是首个包含立体热像仪、立体事件相机和单色相机的数据集。该数据集和支持软件套件可在 https://umautobots.github.io/nsavp 上获取。
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Dataset and Benchmark: Novel Sensors for Autonomous Vehicle Perception
Conventional cameras employed in autonomous vehicle (AV) systems support many perception tasks but are challenged by low-light or high dynamic range scenes, adverse weather, and fast motion. Novel sensors, such as event and thermal cameras, offer capabilities with the potential to address these scenarios, but they remain to be fully exploited. This paper introduces the Novel Sensors for Autonomous Vehicle Perception (NSAVP) dataset to facilitate future research on this topic. The dataset was captured with a platform including stereo event, thermal, monochrome, and RGB cameras as well as a high precision navigation system providing ground truth poses. The data was collected by repeatedly driving two ∼8 km routes and includes varied lighting conditions and opposing viewpoint perspectives. We provide benchmarking experiments on the task of place recognition to demonstrate challenges and opportunities for novel sensors to enhance critical AV perception tasks. To our knowledge, the NSAVP dataset is the first to include stereo thermal cameras together with stereo event and monochrome cameras. The dataset and supporting software suite is available at https://umautobots.github.io/nsavp .
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