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Autori principali: Wang, Hao, Wei, Xiaobao, He, Jingyang, Bai, Chengyu, Fan, Chun-Kai, Cao, Jiajun, Chen, Jintao, Li, Ying, Rong, Shanyu, Lu, Ming, Ju, Xiaozhu, Tang, Jian, Zhang, Shanghang
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2605.10485
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author Wang, Hao
Wei, Xiaobao
He, Jingyang
Bai, Chengyu
Fan, Chun-Kai
Cao, Jiajun
Chen, Jintao
Li, Ying
Rong, Shanyu
Lu, Ming
Ju, Xiaozhu
Tang, Jian
Zhang, Shanghang
author_facet Wang, Hao
Wei, Xiaobao
He, Jingyang
Bai, Chengyu
Fan, Chun-Kai
Cao, Jiajun
Chen, Jintao
Li, Ying
Rong, Shanyu
Lu, Ming
Ju, Xiaozhu
Tang, Jian
Zhang, Shanghang
contents Precise spatial reasoning is fundamental to robotic manipulation, yet the visual backbones of current vision-language-action (VLA) models are predominantly pretrained on 2D image data without explicit 3D geometric supervision, resulting in representations that lack accurate spatial awareness. Existing implicit spatial grounding methods partially address this by aligning VLA features with those of 3D-aware foundation models, but they rely on empirical layer search and perform alignment on LLM-level visual tokens where spatial structure has already been entangled with linguistic semantics, limiting both generalizability and geometric interpretability. We propose VEGA (Visual Encoder Grounding Alignment), a simple yet effective framework that directly aligns the output of the VLA's visual encoder with spatially-aware features from DINOv2-FiT3D, a DINOv2 model fine-tuned with multi-view consistent 3D Gaussian Splatting supervision. By performing alignment at the visual encoder output level, VEGA grounds spatial awareness before any linguistic entanglement occurs, offering a more interpretable and principled alignment target. The alignment is implemented via a lightweight projector trained with a cosine similarity loss alongside the standard action prediction objective, and is discarded at inference time, introducing no additional computational overhead. Extensive experiments on simulation benchmark and real-world manipulation tasks demonstrate that VEGA consistently outperforms existing implicit spatial grounding baselines, establishing a new state-of-the-art among implicit spatial grounding methods for VLA models.
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spellingShingle VEGA: Visual Encoder Grounding Alignment for Spatially-Aware Vision-Language-Action Models
Wang, Hao
Wei, Xiaobao
He, Jingyang
Bai, Chengyu
Fan, Chun-Kai
Cao, Jiajun
Chen, Jintao
Li, Ying
Rong, Shanyu
Lu, Ming
Ju, Xiaozhu
Tang, Jian
Zhang, Shanghang
Robotics
Precise spatial reasoning is fundamental to robotic manipulation, yet the visual backbones of current vision-language-action (VLA) models are predominantly pretrained on 2D image data without explicit 3D geometric supervision, resulting in representations that lack accurate spatial awareness. Existing implicit spatial grounding methods partially address this by aligning VLA features with those of 3D-aware foundation models, but they rely on empirical layer search and perform alignment on LLM-level visual tokens where spatial structure has already been entangled with linguistic semantics, limiting both generalizability and geometric interpretability. We propose VEGA (Visual Encoder Grounding Alignment), a simple yet effective framework that directly aligns the output of the VLA's visual encoder with spatially-aware features from DINOv2-FiT3D, a DINOv2 model fine-tuned with multi-view consistent 3D Gaussian Splatting supervision. By performing alignment at the visual encoder output level, VEGA grounds spatial awareness before any linguistic entanglement occurs, offering a more interpretable and principled alignment target. The alignment is implemented via a lightweight projector trained with a cosine similarity loss alongside the standard action prediction objective, and is discarded at inference time, introducing no additional computational overhead. Extensive experiments on simulation benchmark and real-world manipulation tasks demonstrate that VEGA consistently outperforms existing implicit spatial grounding baselines, establishing a new state-of-the-art among implicit spatial grounding methods for VLA models.
title VEGA: Visual Encoder Grounding Alignment for Spatially-Aware Vision-Language-Action Models
topic Robotics
url https://arxiv.org/abs/2605.10485