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Fake It Till You Make It: Towards Accurate Near-Distribution Novelty Detection

About

We aim for image-based novelty detection. Despite considerable progress, existing models either fail or face a dramatic drop under the so-called "near-distribution" setting, where the differences between normal and anomalous samples are subtle. We first demonstrate existing methods experience up to 20% decrease in performance in the near-distribution setting. Next, we propose to exploit a score-based generative model to produce synthetic near-distribution anomalous data. Our model is then fine-tuned to distinguish such data from the normal samples. We provide a quantitative as well as qualitative evaluation of this strategy, and compare the results with a variety of GAN-based models. Effectiveness of our method for both the near-distribution and standard novelty detection is assessed through extensive experiments on datasets in diverse applications such as medical images, object classification, and quality control. This reveals that our method considerably improves over existing models, and consistently decreases the gap between the near-distribution and standard novelty detection performance. The code repository is available at https://github.com/rohban-lab/FITYMI.

Hossein Mirzaei, Mohammadreza Salehi, Sajjad Shahabi, Efstratios Gavves, Cees G. M. Snoek, Mohammad Sabokrou, Mohammad Hossein Rohban• 2022

Related benchmarks

TaskDatasetResultRank
Anomaly DetectionCIFAR-10
AUC99.1
120
Anomaly DetectionWBC
ROCAUC0.912
87
Anomaly DetectionCIFAR-100
AUROC98.1
72
Anomaly DetectionFashion MNIST
Avg AUC79.9
40
Anomaly DetectionMVTec AD
AUROC0.864
33
Novelty DetectionStanford Cars
AUROC0.908
15
One-class novelty detectionCIFAR10
AUROC0.991
13
Novelty DetectionCIFAR-10vs100
AUROC0.9
11
Novelty DetectionCIFAR-10-FSDE
AUROC96.4
11
Novelty DetectionCIFAR-10-FSGAN
AUROC95.1
11
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