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Bayesian Prototypical Pruning for Transformers in Human–Robot Collaboration

Author

Listed:
  • Bohua Peng

    (School of Automation, Northwestern Polytechnical University, Xi’an 710072, China)

  • Bin Chen

    (School of Electrical and Electronic Engineering, The University of Sheffield, Sheffield S1 4DP, UK)

Abstract

Action representations are essential for developing mutual cognition toward efficient human–AI collaboration, particularly in human–robot collaborative (HRC) workspaces. As such, it has become an emerging research direction for robots to understand human intentions with video Transformers. Despite their remarkable success in capturing long-range dependencies, local redundancy in video frames can add up to the inference latency of Transformers due to overparameterization. Recently, token pruning has become a computationally efficient solution that selectively removes input tokens with minimal impact on task performance. However, existing sparse coding methods often have an exhaustive threshold searching process, leading to intensive hyperparameter search. In this paper, Bayesian Prototypical Pruning (ProtoPrune), a novel end-to-end Bayesian framework, is proposed for token pruning in video understanding. To improve robustness, ProtoPrune leverages prototypical contrastive learning for fine-grained action representations, bringing sub-action level supervision to the video token pruning task. With variational dropout, our method bypasses the exhaustive threshold searching process. Experiments show that the proposed method can achieve a pruning rate of 37 . 2 % while retaining 92 . 9 % of task performance using Uniformer and ActionCLIP, which significantly improves computational efficiency. Convergence analysis ensures the stability of our method. The proposed efficient video understanding method offers a theoretically grounded and hardware-friendly solution for deploying video Transformers in real-world HRC environments.

Suggested Citation

  • Bohua Peng & Bin Chen, 2025. "Bayesian Prototypical Pruning for Transformers in Human–Robot Collaboration," Mathematics, MDPI, vol. 13(9), pages 1-20, April.
  • Handle: RePEc:gam:jmathe:v:13:y:2025:i:9:p:1411-:d:1642501
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