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Papers/DiffusionAD: Norm-guided One-step Denoising Diffusion for ...

DiffusionAD: Norm-guided One-step Denoising Diffusion for Anomaly Detection

HUI ZHANG, Zheng Wang, Dan Zeng, Zuxuan Wu, Yu-Gang Jiang

2023-03-15DenoisingUnsupervised Anomaly DetectionAnomaly Detection
PaperPDFCode(official)Code(official)

Abstract

Anomaly detection has garnered extensive applications in real industrial manufacturing due to its remarkable effectiveness and efficiency. However, previous generative-based models have been limited by suboptimal reconstruction quality, hampering their overall performance. We introduce DiffusionAD, a novel anomaly detection pipeline comprising a reconstruction sub-network and a segmentation sub-network. A fundamental enhancement lies in our reformulation of the reconstruction process using a diffusion model into a noise-to-norm paradigm. Here, the anomalous region loses its distinctive features after being disturbed by Gaussian noise and is subsequently reconstructed into an anomaly-free one. Afterward, the segmentation sub-network predicts pixel-level anomaly scores based on the similarities and discrepancies between the input image and its anomaly-free reconstruction. Additionally, given the substantial decrease in inference speed due to the iterative denoising nature of diffusion models, we revisit the denoising process and introduce a rapid one-step denoising paradigm. This paradigm achieves hundreds of times acceleration while preserving comparable reconstruction quality. Furthermore, considering the diversity in the manifestation of anomalies, we propose a norm-guided paradigm to integrate the benefits of multiple noise scales, enhancing the fidelity of reconstructions. Comprehensive evaluations on four standard and challenging benchmarks reveal that DiffusionAD outperforms current state-of-the-art approaches and achieves comparable inference speed, demonstrating the effectiveness and broad applicability of the proposed pipeline. Code is released at https://github.com/HuiZhang0812/DiffusionAD

Results

TaskDatasetMetricValueModel
Anomaly DetectionMPDDDetection AUROC96.2DiffusionAD
Anomaly DetectionMPDDSegmentation AUPRO95.3DiffusionAD
Anomaly DetectionMPDDSegmentation AUROC98.5DiffusionAD
Anomaly DetectionVisADetection AUROC98.8DiffusionAD
Anomaly DetectionVisASegmentation AUPRO96DiffusionAD
Anomaly DetectionVisASegmentation AUPRO (until 30% FPR)96DiffusionAD
Anomaly DetectionVisASegmentation AUROC98.9DiffusionAD
Anomaly DetectionDAGM2007Detection AUROC99.6DiffusionAD
Unsupervised Anomaly DetectionDAGM2007Detection AUROC99.6DiffusionAD

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