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SQUID: Deep Feature In-Painting for Unsupervised Anomaly Detection

About

Radiography imaging protocols focus on particular body regions, therefore producing images of great similarity and yielding recurrent anatomical structures across patients. To exploit this structured information, we propose the use of Space-aware Memory Queues for In-painting and Detecting anomalies from radiography images (abbreviated as SQUID). We show that SQUID can taxonomize the ingrained anatomical structures into recurrent patterns; and in the inference, it can identify anomalies (unseen/modified patterns) in the image. SQUID surpasses 13 state-of-the-art methods in unsupervised anomaly detection by at least 5 points on two chest X-ray benchmark datasets measured by the Area Under the Curve (AUC). Additionally, we have created a new dataset (DigitAnatomy), which synthesizes the spatial correlation and consistent shape in chest anatomy. We hope DigitAnatomy can prompt the development, evaluation, and interpretability of anomaly detection methods.

Tiange Xiang, Yixiao Zhang, Yongyi Lu, Alan L. Yuille, Chaoyi Zhang, Weidong Cai, Zongwei Zhou• 2021

Related benchmarks

TaskDatasetResultRank
Anomaly DetectionBrainMRI (test)
AUC-ROC0.793
52
Anomaly DetectionCheXpert (test)
AUROC0.781
49
Chest X-ray classificationPneumonia (test)
Accuracy0.803
35
Anomaly DetectionBUSI (test)
AUROC (Image)67.8
32
Anomaly LocalizationBUSI (test)
Pixel AUROC0.684
28
Anomaly DetectionZhangLab dataset (test)
AUC87.6
19
Pneumonia DetectionChest X-Ray PX (test)
AUROC0.876
14
Anomaly DetectionDigitAnatomy
AUROC0.557
11
Anomaly DetectionHeadCT (test)
AUROC75.4
7
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