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SeTAR: Out-of-Distribution Detection with Selective Low-Rank Approximation

About

Out-of-distribution (OOD) detection is crucial for the safe deployment of neural networks. Existing CLIP-based approaches perform OOD detection by devising novel scoring functions or sophisticated fine-tuning methods. In this work, we propose SeTAR, a novel, training-free OOD detection method that leverages selective low-rank approximation of weight matrices in vision-language and vision-only models. SeTAR enhances OOD detection via post-hoc modification of the model's weight matrices using a simple greedy search algorithm. Based on SeTAR, we further propose SeTAR+FT, a fine-tuning extension optimizing model performance for OOD detection tasks. Extensive evaluations on ImageNet1K and Pascal-VOC benchmarks show SeTAR's superior performance, reducing the relatively false positive rate by up to 18.95% and 36.80% compared to zero-shot and fine-tuning baselines. Ablation studies further validate SeTAR's effectiveness, robustness, and generalizability across different model backbones. Our work offers a scalable, efficient solution for OOD detection, setting a new state-of-the-art in this area.

Yixia Li, Boya Xiong, Guanhua Chen, Yun Chen• 2024

Related benchmarks

TaskDatasetResultRank
Out-of-Distribution DetectioniNaturalist
AUROC94.67
252
Out-of-Distribution DetectionPlaces
FPR9542.64
175
Out-of-Distribution DetectionTexture
AUROC86.58
128
Out-of-Distribution DetectionSUN
FPR@9535.57
104
Out-of-Distribution DetectionAverage (iNaturalist, SUN, Places, Textures)
FPR@9540.24
89
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