Datasets for autonomous cars are essential for the development and benchmarking of perception systems. However, most existing datasets are captured with camera and LiDAR sensors in good weather conditions. In this paper, we present the RAdar Dataset In Adverse weaThEr (RADIATE), aiming to facilitate research on object detection, tracking and scene understanding using radar sensing for safe autonomous driving. RADIATE includes 3 hours of annotated radar images with more than 200K labelled road actors in total, on average about 4.6 instances per radar image. It covers 8 different categories of actors in a variety of weather conditions (e.g., sun, night, rain, fog and snow) and driving scenarios (e.g., parked, urban, motorway and suburban), representing different levels of challenge. To the best of our knowledge, this is the first public radar dataset which provides high-resolution radar images on public roads with a large amount of road actors labelled. The data collected in adverse weather, e.g., fog and snowfall, is unique. Some baseline results of radar based object detection and recognition are given to show that the use of radar data is promising for automotive applications in bad weather, where vision and LiDAR can fail. RADIATE also has stereo images, 32-channel LiDAR and GPS data, directed at other applications such as sensor fusion, localisation and mapping. The public dataset can be accessed at http://pro.hw.ac.uk/radiate/.
翻译:自主汽车的数据集对于认识系统的发展和基准制定至关重要,然而,大多数现有数据集都是在气候条件良好的情况下用相机和激光雷达传感器收集的。本文介绍RADAR Dataset In Averse weather(RADIATE),目的是便利利用雷达遥感和安全自主驾驶,对物体的探测、跟踪和现场了解进行研究。RADIATE包括3小时附加说明的雷达图像,总共有200公里以上标记的道路行为者,平均每个雷达图像约4.6个,涵盖不同天气条件下的8个不同行为体类别(如太阳、黑夜、雨、雾和雪)和驾驶场情景(如停放、城市、高速公路和郊区),代表不同程度的挑战。据我们所知,这是第一个公共雷达数据集,为公共道路提供了高分辨率的雷达图像,有超过200公里标记的道路行为者。在恶劣天气中收集的数据,例如雾和降雪,是独一无二的。基于雷达的物体探测和确认的一些基线结果显示,使用雷达数据(如停放、停放、停放、停放、停放、停放),用于RAISARIAD的其他数据,在坏气象上无法进行。