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PNI : Industrial Anomaly Detection using Position and Neighborhood Information

About

Because anomalous samples cannot be used for training, many anomaly detection and localization methods use pre-trained networks and non-parametric modeling to estimate encoded feature distribution. However, these methods neglect the impact of position and neighborhood information on the distribution of normal features. To overcome this, we propose a new algorithm, \textbf{PNI}, which estimates the normal distribution using conditional probability given neighborhood features, modeled with a multi-layer perceptron network. Moreover, position information is utilized by creating a histogram of representative features at each position. Instead of simply resizing the anomaly map, the proposed method employs an additional refine network trained on synthetic anomaly images to better interpolate and account for the shape and edge of the input image. We conducted experiments on the MVTec AD benchmark dataset and achieved state-of-the-art performance, with \textbf{99.56\%} and \textbf{98.98\%} AUROC scores in anomaly detection and localization, respectively.

Jaehyeok Bae, Jae-Han Lee, Seyun Kim• 2022

Related benchmarks

TaskDatasetResultRank
Anomaly LocalizationMVTec AD--
369
Anomaly DetectionMVTec-AD (test)--
226
Anomaly SegmentationMVTec-AD (test)--
85
Anomaly LocalizationMVTec AD 1.0 (test)--
47
Anomaly DetectionMVTec AD
AUROC (Image-level)99.63
45
Anomaly SegmentationBTAD
Average Pixel AUROC97.8
41
Anomaly SegmentationMVTec AD
AUROC (Pixelwise)0.9906
33
Anomaly DetectionMVTec AD 8 (test)
AUROC (Carpet)98.5
12
Image-level Anomaly DetectionMVTec SL (test)
Sensitivity (S)99.5
11
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