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Rethinking of Radar’s Role: A Camera-Radar Dataset and Systematic Annotator via Coordinate Alignment

机译:重新思考雷达的角色:通过坐标对齐的相机雷达数据集和系统注释器

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Radar has long been a common sensor on autonomous vehicles for obstacle ranging and speed estimation. However, as a robust sensor to all-weather conditions, radar’s capability has not been well-exploited, compared with camera or LiDAR. Instead of just serving as a supplementary sensor, radar’s rich information hidden in the radio frequencies can potentially provide useful clues to achieve more complicated tasks, like object classification and detection. In this paper, we propose a new dataset, named CRUW1, with a systematic annotator and performance evaluation system to address the radar object detection (ROD) task, which aims to classify and localize the objects in 3D purely from radar’s radio frequency (RF) images. To the best of our knowledge, CRUW is the first public large-scale dataset with a systematic annotation and evaluation system, which involves camera RGB images and radar RF images, collected in various driving scenarios.
机译:雷达长期以来一直是自主车辆的常见传感器,用于障碍和速度估计。然而,与全天候条件的强大传感器一样,与相机或激光雷达相比,雷达的能力尚未充分利用。而不是用作补充传感器,雷达隐藏在无线电频率中的丰富信息可能会提供有用的线索,以实现更复杂的任务,如对象分类和检测。在本文中,我们提出了一个名为Cruw的新数据集 1 ,具有系统的注释器和性能评估系统,可以解决雷达对象检测(棒)任务,旨在纯粹从雷达的射频(RF)图像中的3D中的对象分类和本地化。据我们所知,CRUW是第一个具有系统注释和评估系统的第一个公共大型数据集,其涉及在各种驾驶场景中收集的摄像机RGB图像和雷达RF图像。

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