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Main Authors: Zhang, Haoyu, Jin, Shibo, Li, Lusong, Li, Jun, Lin, Liang, He, Xiaodong, Zeng, Zecui
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.07284
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author Zhang, Haoyu
Jin, Shibo
Li, Lusong
Li, Jun
Lin, Liang
He, Xiaodong
Zeng, Zecui
author_facet Zhang, Haoyu
Jin, Shibo
Li, Lusong
Li, Jun
Lin, Liang
He, Xiaodong
Zeng, Zecui
contents Retargeting human motion to heterogeneous robots is a fundamental challenge in robotics, primarily due to the severe kinematic and dynamic discrepancies between varying embodiments. Existing solutions typically resort to training embodiment-specific models, which scales poorly and fails to exploit shared motion semantics. To address this, we present AdaMorph, a unified neural retargeting framework that enables a single model to adapt human motion to diverse robot morphologies. Our approach treats retargeting as a conditional generation task. We map human motion into a morphology-agnostic latent intent space and utilize a dual-purpose prompting mechanism to condition the generation. Instead of simple input concatenation, we leverage Adaptive Layer Normalization (AdaLN) to dynamically modulate the decoder's feature space based on embodiment constraints. Furthermore, we enforce physical plausibility through a curriculum-based training objective that ensures orientation and trajectory consistency via integration. Experimental results on 12 distinct humanoid robots demonstrate that AdaMorph effectively unifies control across heterogeneous topologies, exhibiting strong zero-shot generalization to unseen complex motions while preserving the dynamic essence of the source behaviors.
format Preprint
id arxiv_https___arxiv_org_abs_2601_07284
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle AdaMorph: Unified Motion Retargeting via Embodiment-Aware Adaptive Transformers
Zhang, Haoyu
Jin, Shibo
Li, Lusong
Li, Jun
Lin, Liang
He, Xiaodong
Zeng, Zecui
Robotics
Retargeting human motion to heterogeneous robots is a fundamental challenge in robotics, primarily due to the severe kinematic and dynamic discrepancies between varying embodiments. Existing solutions typically resort to training embodiment-specific models, which scales poorly and fails to exploit shared motion semantics. To address this, we present AdaMorph, a unified neural retargeting framework that enables a single model to adapt human motion to diverse robot morphologies. Our approach treats retargeting as a conditional generation task. We map human motion into a morphology-agnostic latent intent space and utilize a dual-purpose prompting mechanism to condition the generation. Instead of simple input concatenation, we leverage Adaptive Layer Normalization (AdaLN) to dynamically modulate the decoder's feature space based on embodiment constraints. Furthermore, we enforce physical plausibility through a curriculum-based training objective that ensures orientation and trajectory consistency via integration. Experimental results on 12 distinct humanoid robots demonstrate that AdaMorph effectively unifies control across heterogeneous topologies, exhibiting strong zero-shot generalization to unseen complex motions while preserving the dynamic essence of the source behaviors.
title AdaMorph: Unified Motion Retargeting via Embodiment-Aware Adaptive Transformers
topic Robotics
url https://arxiv.org/abs/2601.07284