RadGT: graph and transformer-based automotive radar point cloud segmentation

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2023-10-25

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Abstract

The need for visual perception systems providing situational awareness to autonomous vehicles has grown significantly. While traditional deep neural networks are effective for solving 2-D Euclidean problems, point cloud analysis, particularly for radar data, contains unique challenges because of the irregular geometry of point clouds. This letter proposes a novel transformer-based architecture for radar point clouds adapted to the graph signal processing (GSP) framework, designed to handle non-Euclidean and irregular signal structures. We provide experimental results by using well-established benchmarks on the nuScenes and RadarScenes datasets to validate our proposed method.

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IEEE Sensors Letters

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Institute of Electrical and Electronics Engineers

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Published Version (Please cite this version)

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en