Proxy-FDA: Proxy-based Feature Distribution Alignment for Fine-tuning Vision Foundation Models without Forgetting
Chen Huang, Skyler Seto, Hadi Pouransari, Mehrdad Farajtabar, Raviteja Vemulapalli, Fartash Faghri, Oncel Tuzel, Barry-John Theobald, Josh Susskind

TL;DR
Proxy-FDA is a novel regularization technique that aligns feature distributions using neighborhood graphs and dynamic proxies to mitigate concept forgetting when fine-tuning vision models.
Contribution
It introduces Proxy-FDA, a method that explicitly preserves feature neighborhood structures during fine-tuning, improving knowledge retention across multiple tasks.
Findings
Significantly reduces concept forgetting during fine-tuning.
Strong correlation between forgetting and distributional distance.
Effective across various fine-tuning scenarios and tasks.
Abstract
Vision foundation models pre-trained on massive data encode rich representations of real-world concepts, which can be adapted to downstream tasks by fine-tuning. However, fine-tuning foundation models on one task often leads to the issue of concept forgetting on other tasks. Recent methods of robust fine-tuning aim to mitigate forgetting of prior knowledge without affecting the fine-tuning performance. Knowledge is often preserved by matching the original and fine-tuned model weights or feature pairs. However, such point-wise matching can be too strong, without explicit awareness of the feature neighborhood structures that encode rich knowledge as well. We propose a novel regularization method Proxy-FDA that explicitly preserves the structural knowledge in feature space. Proxy-FDA performs Feature Distribution Alignment (using nearest neighbor graphs) between the pre-trained and…
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Taxonomy
TopicsMedical Image Segmentation Techniques · Advanced Neural Network Applications · Advanced Image and Video Retrieval Techniques
