Unlike RGB cameras that use visible light bands (384$\sim$769 THz) and Lidar that use infrared bands (361$\sim$331 THz), Radars use relatively longer wavelength radio bands (77$\sim$81 GHz), resulting in robust measurements in adverse weathers. Unfortunately, existing Radar datasets only contain a relatively small number of samples compared to the existing camera and Lidar datasets. This may hinder the development of sophisticated data-driven deep learning techniques for Radar-based perception. Moreover, most of the existing Radar datasets only provide 3D Radar tensor (3DRT) data that contain power measurements along the Doppler, range, and azimuth dimensions. As there is no elevation information, it is challenging to estimate the 3D bounding box of an object from 3DRT. In this work, we introduce KAIST-Radar (K-Radar), a novel large-scale object detection dataset and benchmark that contains 35K frames of 4D Radar tensor (4DRT) data with power measurements along the Doppler, range, azimuth, and elevation dimensions, together with carefully annotated 3D bounding box labels of objects on the roads. K-Radar includes challenging driving conditions such as adverse weathers (fog, rain, and snow) on various road structures (urban, suburban roads, alleyways, and highways). In addition to the 4DRT, we provide auxiliary measurements from carefully calibrated high-resolution Lidars, surround stereo cameras, and RTK-GPS. We also provide 4DRT-based object detection baseline neural networks (baseline NNs) and show that the height information is crucial for 3D object detection. And by comparing the baseline NN with a similarly-structured Lidar-based neural network, we demonstrate that 4D Radar is a more robust sensor for adverse weather conditions. All codes are available at https://github.com/kaist-avelab/k-radar.
翻译:与使用可见光带(384美元Dsim 769THz)和使用红外带(361美元Sim331THZ)的利达尔不同,雷达使用相对较长的波长无线电波带(77美元Sim美元81GHz),导致在恶劣天气中进行强力测量。不幸的是,现有的雷达数据集与现有的照相机和利达尔数据集相比,只包含数量相对较少的样本。这可能会妨碍开发由数据驱动的关于基于雷达的感知的尖端数据深学习技术。此外,大多数现有的雷达数据集仅提供包含沿多普勒、射程和亚齐姆特等维度测量力的3D雷达阵列(36K-Dsim Dsm)数据。由于没有高端信息,因此很难估计3D3RTT的物体的3D捆绑定框。 在这项工作中,我们引入了K-Radar(K-Radar)的新型物体探测数据和基准,其中含有基于4D雷达的35K(4DRT)直径直径直径数据,同时提供与目标探测器的动力测量、测测测距、测距、测距、测距、测距、测距的4号路基路的4号路、直径、直径路、直径路、直径路、直径、直径、直径、直径路、直径、直径、直径、直径、直路、直径路、直径、直径、直路、直径、直径、直径、直径、直径、直径、直径、直径、直径、直径、直径、直径、直径、直径、直路、直路、直路、直路、直径、直径、直路、直路、直路、直径、直路、直路、直路、直路、直路、直路、路、直路、直路、路、路、直路、直路、直路、直路、直路、直路、直路、直路、直路、直路、直路、直路、直路、直路、路、直路、直路、直路、直路、直路、直路、直路、直路、直路、直路、直路、直