2024
DOI: 10.3390/rs16224256
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Learning Omni-Dimensional Spatio-Temporal Dependencies for Millimeter-Wave Radar Perception

Hang Yan,
Yongji Li,
Luping Wang
et al.

Abstract: Reliable environmental perception capabilities are a prerequisite for achieving autonomous driving. Cameras and LiDAR are sensitive to illumination and weather conditions, while millimeter-wave radar avoids these issues. Existing models rely heavily on image-based approaches, which may not be able to fully characterize radar sensor data or efficiently further utilize them for perception tasks. This paper rethinks the approach to modeling radar signals and proposes a novel U-shaped multilayer perceptron network… Show more

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