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arxiv: 1810.02607 · v1 · pith:W5NV2GNWnew · submitted 2018-10-05 · 💻 cs.CV · cs.AI

Spatially-weighted Anomaly Detection

classification 💻 cs.CV cs.AI
keywords methodsanomalydetectionmethoddatasetimagesknownnoises
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Many types of anomaly detection methods have been proposed recently, and applied to a wide variety of fields including medical screening and production quality checking. Some methods have utilized images, and, in some cases, a part of the anomaly images is known beforehand. However, this kind of information is dismissed by previous methods, because the methods can only utilize a normal pattern. Moreover, the previous methods suffer a decrease in accuracy due to negative effects from surrounding noises. In this study, we propose a spatially-weighted anomaly detection method (SPADE) that utilizes all of the known patterns and lessens the vulnerability to ambient noises by applying Grad-CAM, which is the visualization method of a CNN. We evaluated our method quantitatively using two datasets, the MNIST dataset with noise and a dataset based on a brief screening test for dementia.

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