Fourier Transformation Autoencoders For Anomaly Detection
Demetris Lappas, Vasileios Argyriou, Dimitrios Makris
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Anomaly detection is a challenging problem, mainly due to the lack of a sufficient set of abnormal samples that represents every possible anomaly. Therefore unsupervised methods are employed to model normality and anomaly is detected as an outlier to such model. This paper introduces Fourier Transforms into AutoEncoders to demonstrate how the inclusion of a frequency domain presents less noisy features for a deep learning network to detect anomalies. Comparing our results to the state of the art on a variety of datasets, we show how the proposed method can provide competitive results.
Chairs:
Zhizhen Zhao