Align then Adapt: Rethinking Parameter-Efficient Transfer Learning in 4D Perception
This work provides a more efficient way to leverage existing 3D models for 4D perception tasks, which is crucial for robotics applications where 4D data is scarce.
This paper addresses the scarcity of 4D datasets for point cloud video understanding by proposing a novel "Align then Adapt" (PointATA) paradigm to transfer 3D pre-trained models to 4D perception tasks. PointATA achieves 97.21% accuracy on 3D action recognition, +8.7% on 4D action segmentation, and 84.06% on 4D semantic segmentation, matching or outperforming full fine-tuning models with greater parameter efficiency.
Point cloud video understanding is critical for robotics as it accurately encodes motion and scene interaction. We recognize that 4D datasets are far scarcer than 3D ones, which hampers the scalability of self-supervised 4D models. A promising alternative is to transfer 3D pre-trained models to 4D perception tasks. However, rigorous empirical analysis reveals two critical limitations that impede transfer capability: overfitting and the modality gap. To overcome these challenges, we develop a novel "Align then Adapt" (PointATA) paradigm that decomposes parameter-efficient transfer learning into two sequential stages. Optimal-transport theory is employed to quantify the distributional discrepancy between 3D and 4D datasets, enabling our proposed point align embedder to be trained in Stage 1 to alleviate the underlying modality gap. To mitigate overfitting, an efficient point-video adapter and a spatial-context encoder are integrated into the frozen 3D backbone to enhance temporal modeling capacity in Stage 2. Notably, with the above engineering-oriented designs, PointATA enables a pre-trained 3D model without temporal knowledge to reason about dynamic video content at a smaller parameter cost compared to previous work. Extensive experiments show that PointATA can match or even outperform strong full fine-tuning models, whilst enjoying the advantage of parameter efficiency, e.g. 97.21 \% accuracy on 3D action recognition, $+8.7 \%$ on 4 D action segmentation, and 84.06\% on 4D semantic segmentation.