Litcius/Paper detail

Radars for Autonomous Driving: A Review of Deep Learning Methods and Challenges

Arvind Srivastav, Soumyajit Mandal

2023IEEE Access67 citationsDOIOpen Access PDF

Abstract

Radar is a key component of the suite of perception sensors used for safe and reliable navigation of autonomous vehicles. Its unique capabilities include high-resolution velocity imaging, detection of agents in occlusion and over long ranges, and robust performance in adverse weather conditions. However, the usage of radar data presents some challenges: it is characterized by low resolution, sparsity, clutter, high uncertainty, and lack of good datasets. These challenges have limited radar deep learning research. As a result, current radar models are often influenced by lidar and vision models, which are focused on optical features that are relatively weak in radar data, thus resulting in under-utilization of radar’s capabilities and diminishing its contribution to autonomous perception. This review seeks to encourage further deep learning research on autonomous radar data by 1) identifying key research themes, and 2) offering a comprehensive overview of current opportunities and challenges in the field. Topics covered include early and late fusion, occupancy flow estimation, uncertainty modeling, and multipath detection. The paper also discusses radar fundamentals and data representation, presents a curated list of recent radar datasets, and reviews state-of-the-art lidar and vision models relevant for radar research.

Topics & Concepts

RadarComputer scienceLidarClutterArtificial intelligenceDeep learningRadar imagingField (mathematics)Sensor fusionRemote sensingKey (lock)Radar configurations and typesRadar engineering detailsMachine learningComputer visionGeographyTelecommunicationsComputer securityMathematicsPure mathematicsTarget Tracking and Data Fusion in Sensor NetworksAdvanced Optical Sensing TechnologiesRadar Systems and Signal Processing