ROMar 31

DreamControl-v2: Simpler and Scalable Autonomous Humanoid Skills via Trainable Guided Diffusion Priors

arXiv:2604.0020229.9
Predicted impact top 13% in RO · last 90 daysOriginality Incremental advance
AI Analysis

This work addresses the problem of complex, interaction-rich manipulation tasks for humanoid robots, representing an incremental improvement over prior methods.

The paper tackles the challenge of developing robust autonomous loco-manipulation skills for humanoids by proposing an improved framework that trains a guided diffusion model directly in the robot's motion space, aggregating diverse datasets, and demonstrates enhanced skill capture and automation in simulation and on a real Unitree-G1 robot.

Developing robust autonomous loco-manipulation skills for humanoids remains an open problem in robotics. While RL has been applied successfully to legged locomotion, applying it to complex, interaction-rich manipulation tasks is harder given long-horizon planning challenges for manipulation. A recent approach along these lines is DreamControl, which addresses these issues by leveraging off-the-shelf human motion diffusion models as a generative prior to guide RL policies during training. In this paper, we investigate the impact of DreamControl's motion prior and propose an improved framework that trains a guided diffusion model directly in the humanoid robot's motion space, aggregating diverse human and robot datasets into a unified embodiment space. We demonstrate that our approach captures a wider range of skills due to the larger training data mixture and establishes a more automated pipeline by removing the need for manual filtering interventions. Furthermore, we show that scaling the generation of reference trajectories is important for achieving robust downstream RL policies. We validate our approach through extensive experiments in simulation and on a real Unitree-G1.

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