DS1 spectrogram: DepthVLA: Enhancing Vision-Language-Action Models with Depth-Aware
  Spatial Reasoning

DepthVLA: Enhancing Vision-Language-Action Models with Depth-Aware Spatial Reasoning

2510.13375

Authors

Tao Jiang,Hang Zhao,Tianyuan Yuan,Yicheng Liu,Chenhao Lu

Abstract

Vision-Language-Action (VLA) models have recently shown impressive generalization and language-guided manipulation capabilities. However, their performance degrades on tasks requiring precise spatial reasoning due to limited spatial reasoning inherited from Vision-Language Models (VLMs).

Existing VLAs rely on extensive action-data pretraining to ground VLMs in 3D space, which reduces training efficiency and is still insufficient for accurate spatial understanding. In this work, we present DepthVLA, a simple yet effective VLA architecture that explicitly incorporates spatial awareness through a pretrained depth prediction module.

DepthVLA adopts a mixture-of-transformers design that unifies a VLM, a depth transformer, and an action expert with fully shared attentions, forming an end-to-end model with enhanced spatial reasoning. Extensive evaluations in both real-world and simulated environments show that DepthVLA outperforms state-of-the-art approaches, achieving 78.5% vs.

65.0% progress in real-world tasks, 94.9% vs. 93.6% in the LIBERO simulator, and 74.8% vs.

58.8% in the Simpler simulator. Our code will be made publicly available.

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