CVRODec 30, 2025

UniAct: Unified Motion Generation and Action Streaming for Humanoid Robots

Peking U
arXiv:2512.24321v15 citationsh-index: 11
Originality Incremental advance
AI Analysis

This addresses the bottleneck of bridging high-level multimodal perception with whole-body execution for humanoid robots, representing an incremental advance.

The paper tackles the problem of translating diverse multimodal instructions into stable, real-time actions for humanoid robots, achieving a 19% improvement in zero-shot tracking success rate and sub-500 ms latency.

A long-standing objective in humanoid robotics is the realization of versatile agents capable of following diverse multimodal instructions with human-level flexibility. Despite advances in humanoid control, bridging high-level multimodal perception with whole-body execution remains a significant bottleneck. Existing methods often struggle to translate heterogeneous instructions -- such as language, music, and trajectories -- into stable, real-time actions. Here we show that UniAct, a two-stage framework integrating a fine-tuned MLLM with a causal streaming pipeline, enables humanoid robots to execute multimodal instructions with sub-500 ms latency. By unifying inputs through a shared discrete codebook via FSQ, UniAct ensures cross-modal alignment while constraining motions to a physically grounded manifold. This approach yields a 19% improvement in the success rate of zero-shot tracking of imperfect reference motions. We validate UniAct on UniMoCap, our 20-hour humanoid motion benchmark, demonstrating robust generalization across diverse real-world scenarios. Our results mark a critical step toward responsive, general-purpose humanoid assistants capable of seamless interaction through unified perception and control.

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