Projection Regret: Reducing Background Bias for Novelty Detection via Diffusion Models
December 05, 2023 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Sungik Choi, Hankook Lee, Honglak Lee, Moontae Lee
arXiv ID
2312.02615
Category
cs.LG: Machine Learning
Cross-listed
cs.CV
Citations
11
Venue
Neural Information Processing Systems
Last Checked
4 months ago
Abstract
Novelty detection is a fundamental task of machine learning which aims to detect abnormal ($\textit{i.e.}$ out-of-distribution (OOD)) samples. Since diffusion models have recently emerged as the de facto standard generative framework with surprising generation results, novelty detection via diffusion models has also gained much attention. Recent methods have mainly utilized the reconstruction property of in-distribution samples. However, they often suffer from detecting OOD samples that share similar background information to the in-distribution data. Based on our observation that diffusion models can \emph{project} any sample to an in-distribution sample with similar background information, we propose \emph{Projection Regret (PR)}, an efficient novelty detection method that mitigates the bias of non-semantic information. To be specific, PR computes the perceptual distance between the test image and its diffusion-based projection to detect abnormality. Since the perceptual distance often fails to capture semantic changes when the background information is dominant, we cancel out the background bias by comparing it against recursive projections. Extensive experiments demonstrate that PR outperforms the prior art of generative-model-based novelty detection methods by a significant margin.
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