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Modality-Composable Diffusion Policy via Inference-Time Distribution-level Composition

Accepted to Generative Models for Robot Learning Workshop @ ICLR 2025

PDF | arXiv | ICLR Genbot Homepage

Jiahang Cao, Qiang Zhang, Hanzhong Guo, Jiaxu Wang, Hao Cheng, Renjing Xu.

HKUSTGZ, Beijing Innovation Center of Humanoid Robotics, HKU

dp3

We introduce a novel policy composition approach, Modality-Composable Diffusion Policy (MCDP), which composes distributional scores from multiple pre-trained diffusion policies (DPs) based on single visual modalities, enabling significant performance improvement without the need for additional training.


Note: The previously released module has been removed. MCDP is now a special case of our General Policy Composition (GPC) framework. Please refer to the GPC and documentation for the unified implementation.

👍 Citation

@article{cao2025MCDP,
  title={Modality-Composable Diffusion Policy via Inference-Time Distribution-level Composition},
  author={Cao, Jiahang and Zhang, Qiang and Guo, Hanzhong and Wang, Jiaxu and Cheng, Hao and Xu, Renjing},
  journal={arXiv preprint arXiv:2503.12466},
  year={2025}
}

🏷️ License

This repository is released under the MIT license. See LICENSE for additional details.

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[ICLR GenBot 2025] Modality-Composable Diffusion Policy via Inference-Time Distribution-level Composition

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