Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Mining Attribute Subspaces for Efficient Fine-tuning of 3D Foundation Models

About

With the emergence of 3D foundation models, there is growing interest in fine-tuning them for downstream tasks, where LoRA is the dominant fine-tuning paradigm. As 3D datasets exhibit distinct variations in texture, geometry, camera motion, and lighting, there are interesting fundamental questions: 1) Are there LoRA subspaces associated with each type of variation? 2) Are these subspaces disentangled (i.e., orthogonal to each other)? 3) How do we compute them effectively? This paper provides answers to all these questions. We introduce a robust approach that generates synthetic datasets with controlled variations, fine-tunes a LoRA adapter on each dataset, and extracts a LoRA sub-space associated with each type of variation. We show that these subspaces are approximately disentangled. Integrating them leads to a reduced LoRA subspace that enables efficient LoRA fine-tuning with improved prediction accuracy for downstream tasks. In particular, we show that such a reduced LoRA subspace, despite being derived entirely from synthetic data, generalizes to real datasets. An ablation study validates the effectiveness of the choices in our approach.

Yu Jiang, Hanwen Jiang, Ahmed Abdelkader, Wen-Sheng Chu, Brandon Y. Feng, Zhangyang Wang, Qixing Huang• 2026

Related benchmarks

TaskDatasetResultRank
Point Map Estimation2K2K (Cross-domain)
Accuracy (Acc)2.513
15
Point Map EstimationTHuman 2.1 (In-domain)
Accuracy (Acc)3.392
15
Face ReconstructionReal Face Dataset
Absolute Relative Error2.151
13
Face ReconstructionSynthetic Face Dataset
Accuracy5.921
13
Point Map EstimationClearPose (In-domain)
Accuracy1.764
11
Showing 5 of 5 rows

Other info

Follow for update