English

Tenma: Robust Cross-Embodiment Robot Manipulation with Diffusion Transformer

Robotics 2025-09-16 v1 Artificial Intelligence

Abstract

Scaling Transformer policies and diffusion models has advanced robotic manipulation, yet combining these techniques in lightweight, cross-embodiment learning settings remains challenging. We study design choices that most affect stability and performance for diffusion-transformer policies trained on heterogeneous, multimodal robot data, and introduce Tenma, a lightweight diffusion-transformer for bi-manual arm control. Tenma integrates multiview RGB, proprioception, and language via a cross-embodiment normalizer that maps disparate state/action spaces into a shared latent space; a Joint State-Time encoder for temporally aligned observation learning with inference speed boosts; and a diffusion action decoder optimized for training stability and learning capacity. Across benchmarks and under matched compute, Tenma achieves an average success rate of 88.95% in-distribution and maintains strong performance under object and scene shifts, substantially exceeding baseline policies whose best in-distribution average is 18.12%. Despite using moderate data scale, Tenma delivers robust manipulation and generalization, indicating the great potential for multimodal and cross-embodiment learning strategies for further augmenting the capacity of transformer-based imitation learning policies.

Keywords

Cite

@article{arxiv.2509.11865,
  title  = {Tenma: Robust Cross-Embodiment Robot Manipulation with Diffusion Transformer},
  author = {Travis Davies and Yiqi Huang and Yunxin Liu and Xiang Chen and Huxian Liu and Luhui Hu},
  journal= {arXiv preprint arXiv:2509.11865},
  year   = {2025}
}

Comments

8 pages, 4 figures

R2 v1 2026-07-01T05:36:45.752Z