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📄 Abstract
Abstract: The rapid progress of auto-regressive vision-language models (VLMs) has
inspired growing interest in vision-language-action models (VLA) for robotic
manipulation. Recently, masked diffusion models, a paradigm distinct from
autoregressive models, have begun to demonstrate competitive performance in
text generation and multimodal applications, leading to the development of a
series of diffusion-based VLMs (d-VLMs). However, leveraging such models for
robot policy learning remains largely unexplored. In this work, we present
LLaDA-VLA, the first Vision-Language-Diffusion-Action model built upon
pretrained d-VLMs for robotic manipulation. To effectively adapt d-VLMs to
robotic domain, we introduce two key designs: (1) a localized special-token
classification strategy that replaces full-vocabulary classification with
special action token classification, reducing adaptation difficulty; (2) a
hierarchical action-structured decoding strategy that decodes action sequences
hierarchically considering the dependencies within and across actions.
Extensive experiments demonstrate that LLaDA-VLA significantly outperforms
state-of-the-art VLAs on both simulation and real-world robots.