Papers
arxiv:2606.05833

Learning Geometric Representations from Videos for Spatial Intelligent Multimodal Large Language Models

Published on Jun 4
· Submitted by
WANG HAIBO
on Jun 5
Authors:
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Abstract

GeoVR enhances multimodal large language models with 3D awareness by restructuring their semantic latent space through geometric knowledge distillation from 3D foundation models using multiple geometric targets.

Multimodal Large Language Models (MLLMs) excel at 2D semantic understanding but lack intrinsic 3D awareness, resulting in representations that fail to maintain geometric and spatial consistency across video frames. Given the scarcity of large-scale 3D data, we present GeoVR, a novel framework that learns geometric representations using purely 2D video sequences. This approach effectively restructures the semantic latent space within MLLMs to unlock spatial intelligence. Rather than employing superficial feature mixing, GeoVR reshapes the internal representations of the MLLM by distilling geometry knowledge from pre-trained 3D foundation models. This is accomplished through a multi-objective learning strategy driven by four complementary geometric targets: (1) estimating inter-frame camera poses to embed varying viewpoint dynamics, (2) regressing dense depth maps to anchor physical distances, (3) predicting a metric scale factor for real-world calibration, and (4) distilling multi-scale 3D features to align the intermediate feature space. Guided by these explicit physical and geometric constraints, the model's internal representations naturally develop strong 3D awareness. Extensive experiments on spatial reasoning benchmarks demonstrate that GeoVR achieves state-of-the-art performance, establishing a new paradigm for endowing foundation models with spatial intelligence.

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We propose GeoVR, a paradigm to restructure MLLM’s intrinsic representations with geometric awareness using purely 2D videos for Spatial Intelligence.

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