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TokenHSI: Unified Synthesis of Physical Human-Scene Interactions through Task Tokenization

arXiv:2503.19901 - [arXiv,PDF]
Authors
  • Name
    Liang Pan
  • Name
    Zeshi Yang
  • Name
    Zhiyang Dou
  • Name
    Wenjia Wang
  • Name
    Buzhen Huang
  • Name
    Bo Dai
  • Name
    Taku Komura
  • Name
    Jingbo Wang
  • Affiliation
    Shanghai AI Laboratory
  • Affiliation
    The University of Hong Kong
  • Affiliation
    Southeast University
  • Affiliation
    Independent Researcher
Synthesizing diverse and physically plausible Human-Scene Interactions (HSI) is pivotal for both computer animation and embodied AI. Despite encouraging progress, current methods mainly focus on developing separate controllers, each specialized for a specific interaction task. This significantly hinders the ability to tackle a wide variety of challenging HSI tasks that require the integration of multiple skills, e.g., sitting down while carrying an object. To address this issue, we present TokenHSI, a single, unified transformer-based policy capable of multi-skill unification and flexible adaptation. The key insight is to model the humanoid proprioception as a separate shared token and combine it with distinct task tokens via a masking mechanism. Such a unified policy enables effective knowledge sharing across skills, thereby facilitating the multi-task training. Moreover, our policy architecture supports variable length inputs, enabling flexible adaptation of learned skills to new scenarios. By training additional task tokenizers, we can not only modify the geometries of interaction targets but also coordinate multiple skills to address complex tasks. The experiments demonstrate that our approach can significantly improve versatility, adaptability, and extensibility in various HSI tasks. Website: https://liangpan99.github.io/TokenHSI/