EMDUL expands mmWave HPE datasets via pseudo-labeling of unlabeled data and a closed-form LiDAR-to-mmWave converter, reducing pose estimation errors by 15.1% in-domain and 18.9% out-of-domain.
A Novel Radar Point Cloud Generation Method for Robot Environment Perception.IEEE Transactions on Robotics, 38(6):3754–3773, 2022
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Expanding mmWave Datasets for Human Pose Estimation with Unlabeled Data and LiDAR Datasets
EMDUL expands mmWave HPE datasets via pseudo-labeling of unlabeled data and a closed-form LiDAR-to-mmWave converter, reducing pose estimation errors by 15.1% in-domain and 18.9% out-of-domain.