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Anomaly Detection Using Autoencoder with Feature Vector Frequency Map
2021
IEEE Access
Anomaly detection uses various machine learning techniques to identify and classify defective data on the production line. The autoencoder-based anomaly detection method is an unsupervised method that classifies abnormal samples using an autoencoder trained only from normal samples and is useful in environments where it is difficult to obtain abnormal samples. This method uses an abnormal score based on the reconstruction loss function, making it difficult to detect defects, such as stains,
doi:10.1109/access.2021.3080330
fatcat:3tl2dnipejhjrdwbs4qgy7xcdy