Carrada dataset: Camera and automotive radar with range-angle-doppler annotations

A Ouaknine, A Newson, J Rebut… - 2020 25th …, 2021 - ieeexplore.ieee.org
2020 25th International Conference on Pattern Recognition (ICPR), 2021ieeexplore.ieee.org
High quality perception is essential for autonomous driving (AD) systems. To reach the
accuracy and robustness thatare required by such systems, several types of sensors must
be combined. Currently, mostly cameras and laser scanners (lidar) are deployed to build a
representation of the world around the vehicle. While radar sensors have been used fora
long time in the automotive industry, they are still under-used for AD despite their appealing
characteristics (notably, their ability to measure the relative speed of obstacles and to …
High quality perception is essential for autonomous driving (AD) systems. To reach the accuracy and robustness thatare required by such systems, several types of sensors must be combined. Currently, mostly cameras and laser scanners (lidar) are deployed to build a representation of the world around the vehicle. While radar sensors have been used fora long time in the automotive industry, they are still under-used for AD despite their appealing characteristics (notably, their ability to measure the relative speed of obstacles and to operate even in adverse weather conditions). To alarge extent, this situation is due to the relative lack of automotive datasets with real radar signals that are both raw and annotated. In this work, we introduce CARRADA, a dataset of synchronized camera and radar recordings with range-angle-Doppler annotations. We also present a semi-automatic annotation approach, which was used to annotate the dataset, and a radar semantic segmentation baseline, which we evaluate on several metrics. Both our code and dataset are available online.
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