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Main Authors: Yu, Bin, Lian, Shijie, Lin, Xiaopeng, Shen, Zhaolong, Wei, Yuliang, Liu, Haishan, Wu, Changti, Yuan, Hang, Wang, Bailing, Huang, Cong, Chen, Kai
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.24393
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author Yu, Bin
Lian, Shijie
Lin, Xiaopeng
Shen, Zhaolong
Wei, Yuliang
Liu, Haishan
Wu, Changti
Yuan, Hang
Wang, Bailing
Huang, Cong
Chen, Kai
author_facet Yu, Bin
Lian, Shijie
Lin, Xiaopeng
Shen, Zhaolong
Wei, Yuliang
Liu, Haishan
Wu, Changti
Yuan, Hang
Wang, Bailing
Huang, Cong
Chen, Kai
contents Vision-Language-Action (VLA) models leverage Multimodal Large Language Models (MLLMs) for robotic control, but recent studies reveal that MLLMs exhibit limited spatial intelligence due to training predominantly on 2D data, resulting in inadequate 3D perception for manipulation tasks. While recent approaches incorporate specialized 3D vision models such as VGGT to enhance spatial understanding, they employ diverse integration mechanisms without systematic investigation, leaving the optimal fusion strategy unclear. We conduct a comprehensive pilot study comparing nine VGGT integration schemes on standardized benchmarks and find that semantic-conditioned gated fusion, which adaptively balances 2D semantic and 3D geometric features based on task context, achieved the strongest performance among all nine evaluated fusion schemes in our pilot study. We present 3D-Mix, a plug-and-play module that integrates into diverse VLA architectures (GR00T-style and $π$-style) without modifying existing MLLM or action expert components. Experiments across six MLLM series (nine model variants, 2B--8B parameters) on SIMPLER and LIBERO show that 3D-Mix delivers consistent performance gains, averaging +7.0% on the out-of-domain (OOD) SIMPLER benchmark across all nine GR00T-style variants, establishing a principled approach for enhancing spatial intelligence in VLA systems.
format Preprint
id arxiv_https___arxiv_org_abs_2603_24393
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle 3D-Mix for VLA: A Plug-and-Play Module for Integrating VGGT-based 3D Information into Vision-Language-Action Models
Yu, Bin
Lian, Shijie
Lin, Xiaopeng
Shen, Zhaolong
Wei, Yuliang
Liu, Haishan
Wu, Changti
Yuan, Hang
Wang, Bailing
Huang, Cong
Chen, Kai
Robotics
Vision-Language-Action (VLA) models leverage Multimodal Large Language Models (MLLMs) for robotic control, but recent studies reveal that MLLMs exhibit limited spatial intelligence due to training predominantly on 2D data, resulting in inadequate 3D perception for manipulation tasks. While recent approaches incorporate specialized 3D vision models such as VGGT to enhance spatial understanding, they employ diverse integration mechanisms without systematic investigation, leaving the optimal fusion strategy unclear. We conduct a comprehensive pilot study comparing nine VGGT integration schemes on standardized benchmarks and find that semantic-conditioned gated fusion, which adaptively balances 2D semantic and 3D geometric features based on task context, achieved the strongest performance among all nine evaluated fusion schemes in our pilot study. We present 3D-Mix, a plug-and-play module that integrates into diverse VLA architectures (GR00T-style and $π$-style) without modifying existing MLLM or action expert components. Experiments across six MLLM series (nine model variants, 2B--8B parameters) on SIMPLER and LIBERO show that 3D-Mix delivers consistent performance gains, averaging +7.0% on the out-of-domain (OOD) SIMPLER benchmark across all nine GR00T-style variants, establishing a principled approach for enhancing spatial intelligence in VLA systems.
title 3D-Mix for VLA: A Plug-and-Play Module for Integrating VGGT-based 3D Information into Vision-Language-Action Models
topic Robotics
url https://arxiv.org/abs/2603.24393