PointRWKV: Efficient RWKV-Like Model for Hierarchical Point Cloud Learning

Authors

  • Qingdong He Tencent Youtu Lab
  • Jiangning Zhang Tencent Youtu Lab
  • Jinlong Peng Tencent Youtu Lab
  • Haoyang He Zhejiang University
  • Xiangtai Li Nanyang Technological University
  • Yabiao Wang Tencent Youtu Lab
  • Chengjie Wang Tencent Youtu Lab

DOI:

https://doi.org/10.1609/aaai.v39i3.32353

Abstract

Transformers have revolutionized the point cloud learning task, but the quadratic complexity hinders its extension to long sequence and makes a burden on limited computational resources. The recent advent of RWKV, a fresh breed of deep sequence models, has shown immense potential for sequence modeling in NLP tasks. In this paper, we present PointRWKV, a model of linear complexity derived from the RWKV model in the NLP field with necessary modifications for point cloud learning tasks. Specifically, taking the embedded point patches as input, we first propose to explore the global processing capabilities within PointRWKV blocks using modified multi-headed matrix-valued states and a dynamic attention recurrence mechanism. To extract local geometric features simultaneously, we design a parallel branch to encode the point cloud efficiently in a fixed radius near-neighbors graph with a graph stabilizer. Furthermore, we design PointRWKV as a multi-scale framework for hierarchical feature learning of 3D point clouds, facilitating various downstream tasks. Extensive experiments on different point cloud learning tasks show our proposed PointRWKV outperforms the transformer- and mamba-based counterparts, while significantly saving about 42\% FLOPs, demonstrating the potential option for constructing foundational 3D models.

Published

2025-04-11

How to Cite

He, Q., Zhang, J., Peng, J., He, H., Li, X., Wang, Y., & Wang, C. (2025). PointRWKV: Efficient RWKV-Like Model for Hierarchical Point Cloud Learning. Proceedings of the AAAI Conference on Artificial Intelligence, 39(3), 3410–3418. https://doi.org/10.1609/aaai.v39i3.32353

Issue

Section

AAAI Technical Track on Computer Vision II