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Let Geometry GUIDE: Layer-wise Unrolling of Geometric Priors in Multimodal LLMs

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Multimodal Large Language Models (MLLMs) have achieved remarkable progress in 2D visual tasks but still exhibit limited physical spatial awareness when processing real-world visual streams. Recently, feed-forward geometric foundation models, which implicitly extract geometric priors, have provided a new pathway to address this issue. However, existing geometry-aware MLLMs are predominantly constrained by the paradigm of single deep-layer extraction and input-level fusion. This flattened fusion leads to the loss of local geometric details and causes semantic mismatches in the early layers. To break this bottleneck, we propose GUIDE (Geometric Unrolling Inside MLLM Early-layers), a progressive geometric priors injection framework. GUIDE performs multi-level sampling within the geometric encoder, comprehensively capturing multi-granularity features ranging from local edges to global topologies. Subsequently, we rigorously align and fuse these multi-level geometric priors step-by-step with the early layers of the MLLM. Building upon the injection of multi-granularity geometric information, this design guides the model to progressively learn the 2D-to-3D transitional process. Furthermore, we introduce a context-aware gating that enables the model to fetch requisite spatial cues based on current semantics, thereby maximizing the utilization efficiency of spatial priors and effectively suppressing redundant geometric noise. Extensive experiments demonstrate that GUIDE significantly outperforms existing baselines on multiple complex spatial reasoning and perception tasks, establishing a novel paradigm for integrating 3D geometric priors into large models.

Chongyu Wang, Ting Huang, Chunyu Sun, Xinyu Ning, Di Wang, Hao Tang• 2026

Related benchmarks

TaskDatasetResultRank
Spatial ReasoningVSI-Bench--
192
3D Visual GroundingScanRefer
Acc@0.553.1
142
3D Dense CaptioningScan2Cap
CIDEr @0.581.2
96
Spatial ReasoningViewspatial
Accuracy48.6
92
Spatial ReasoningVSI-Bench 1.0 (test)
Relative Distance Error58.8
80
Spatial ReasoningCV-Bench
Accuracy84.9
61
Spatial ReasoningMMSI-Bench
Accuracy30.2
52
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