Anomaly Detection with Conditioned Denoising Diffusion Models
- URL: http://arxiv.org/abs/2305.15956v2
- Date: Sun, 3 Dec 2023 14:48:59 GMT
- Title: Anomaly Detection with Conditioned Denoising Diffusion Models
- Authors: Arian Mousakhan, Thomas Brox, Jawad Tayyub
- Abstract summary: We introduce Denoising Diffusion Anomaly Detection (DDAD), a novel denoising process for image reconstruction conditioned on a target image.
Our anomaly detection framework employs the conditioning mechanism, where the target image is set as the input image to guide the denoising process.
DDAD achieves state-of-the-art results of (99.8 %) and (98.9 %) image-level AUROC respectively.
- Score: 32.37548329437798
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Traditional reconstruction-based methods have struggled to achieve
competitive performance in anomaly detection. In this paper, we introduce
Denoising Diffusion Anomaly Detection (DDAD), a novel denoising process for
image reconstruction conditioned on a target image. This ensures a coherent
restoration that closely resembles the target image. Our anomaly detection
framework employs the conditioning mechanism, where the target image is set as
the input image to guide the denoising process, leading to a defectless
reconstruction while maintaining nominal patterns. Anomalies are then localised
via a pixel-wise and feature-wise comparison of the input and reconstructed
image. Finally, to enhance the effectiveness of the feature-wise comparison, we
introduce a domain adaptation method that utilises nearly identical generated
examples from our conditioned denoising process to fine-tune the pretrained
feature extractor. The veracity of DDAD is demonstrated on various datasets
including MVTec and VisA benchmarks, achieving state-of-the-art results of
\(99.8 \%\) and \(98.9 \%\) image-level AUROC respectively.
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