SCKD: Semi-Supervised Cross-Modality Knowledge Distillation for 4D Radar Object Detection
3D object detection is one of the fundamental perception tasks for autonomous vehicles. Fulfilling such a task with a 4D millimeter-wave radar is very attractive since the sensor is able to acquire 3D point clouds similar to Lidar while maintaining robust measurements under adverse weather. However,...
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Zusammenfassung: | 3D object detection is one of the fundamental perception tasks for autonomous
vehicles. Fulfilling such a task with a 4D millimeter-wave radar is very
attractive since the sensor is able to acquire 3D point clouds similar to Lidar
while maintaining robust measurements under adverse weather. However, due to
the high sparsity and noise associated with the radar point clouds, the
performance of the existing methods is still much lower than expected. In this
paper, we propose a novel Semi-supervised Cross-modality Knowledge Distillation
(SCKD) method for 4D radar-based 3D object detection. It characterizes the
capability of learning the feature from a Lidar-radar-fused teacher network
with semi-supervised distillation. We first propose an adaptive fusion module
in the teacher network to boost its performance. Then, two feature distillation
modules are designed to facilitate the cross-modality knowledge transfer.
Finally, a semi-supervised output distillation is proposed to increase the
effectiveness and flexibility of the distillation framework. With the same
network structure, our radar-only student trained by SCKD boosts the mAP by
10.38% over the baseline and outperforms the state-of-the-art works on the VoD
dataset. The experiment on ZJUODset also shows 5.12% mAP improvements on the
moderate difficulty level over the baseline when extra unlabeled data are
available. Code is available at https://github.com/Ruoyu-Xu/SCKD. |
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DOI: | 10.48550/arxiv.2412.14571 |