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Vid-LLM: A Compact Video-based 3D Multimodal LLM with Reconstruction-Reasoning Synergy

About

Recent developments in Multimodal Large Language Models (MLLMs) have significantly improved Vision-Language (VL) reasoning in 2D domains. However, extending these capabilities to 3D scene understanding remains a major challenge. Existing 3D Multimodal Large Language Models (3D-MLLMs) often depend on 3D data inputs, which limits scalability and generalization. To address this limitation, we propose Vid-LLM, a video-based 3D-MLLM that directly processes video inputs without requiring external 3D data, making it practical for real-world deployment. In our method, the geometric prior are directly used to improve the performance of the sceen perception. To integrate the geometric cues into the MLLM compactly, we design a Cross-Task Adapter (CTA) module to align the 3D geometric priors with the vision-language representations. To ensure geometric consistency and integrity, we introduce a Metric Depth Model that recovers real-scale geometry from the reconstruction outputs. Finally, the model is fine-tuned with a two-stage distillation optimization strategy, realizing fast convergence and stabilizes training. Extensive experiments across diverse benchmarks verified the effectiveness of our method on 3D Question Answering, 3D Dense Captioning and 3D Visual Grounding tasks, demonstrating the superior multi-task capabilities.

Haijier Chen, Bo Xu, Shoujian Zhang, Haoze Liu, Jiaxuan Lin, Jingrong Wang• 2025

Related benchmarks

TaskDatasetResultRank
Depth EstimationNYU v2 (test)
Threshold Accuracy (delta < 1.25)98.7
432
3D Visual GroundingScanRefer
Acc@0.556.4
142
3D Dense CaptioningScan2Cap
CIDEr @0.581.5
96
3D Visual GroundingNr3D
Overall Success Rate65.4
83
3D Question AnsweringSQA3D
EM57.3
69
3D Question AnsweringScanQA
EM (Exact Match)27.6
38
Camera pose estimationRealEstate10K--
26
3D Visual GroundingSr3D
Overall Accuracy77.8
15
Point Cloud ReconstructionScanNet
Completeness7.1
13
3D Dense CaptioningScan2Cap (test)
CIDEr@0.581.5
10
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