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Towards Deep Radar Perception for Autonomous Driving: Datasets, Methods, and Challenges

Yi Zhou, Lulu Liu, Haocheng Zhao, Miguel López‐Benítez, Limin Yu, Yutao Yue

2022Sensors141 citationsDOIOpen Access PDF

Abstract

With recent developments, the performance of automotive radar has improved significantly. The next generation of 4D radar can achieve imaging capability in the form of high-resolution point clouds. In this context, we believe that the era of deep learning for radar perception has arrived. However, studies on radar deep learning are spread across different tasks, and a holistic overview is lacking. This review paper attempts to provide a big picture of the deep radar perception stack, including signal processing, datasets, labelling, data augmentation, and downstream tasks such as depth and velocity estimation, object detection, and sensor fusion. For these tasks, we focus on explaining how the network structure is adapted to radar domain knowledge. In particular, we summarise three overlooked challenges in deep radar perception, including multi-path effects, uncertainty problems, and adverse weather effects, and present some attempts to solve them.

Topics & Concepts

RadarDeep learningComputer scienceArtificial intelligenceContext (archaeology)PerceptionRadar imagingDomain (mathematical analysis)Computer visionData scienceReal-time computingGeographyTelecommunicationsMathematicsBiologyMathematical analysisArchaeologyNeuroscienceAdvanced SAR Imaging TechniquesGeophysical Methods and ApplicationsAdvanced Neural Network Applications