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Joint Use of Skip Connections and Synthetic Corruption for Anomaly Detection with Autoencoders

In: Control Charts and Machine Learning for Anomaly Detection in Manufacturing

Author

Listed:
  • Anne-Sophie Collin

    (UCLouvain)

  • Christophe Vleeschouwer

    (UCLouvain)

Abstract

In industrial vision, the anomaly detection problem can be addressed with an autoencoder trained to map an arbitrary image, i.e. with or without any defect, to a clean image, i.e. without any defect. In this approach, anomaly detection relies conventionally on the reconstruction residual or, alternatively, on the reconstruction uncertainty. To improve the sharpness of the reconstruction, we consider an autoencoder architecture with skip connections. In the common scenario where only clean images are available for training, we propose to corrupt them with a synthetic noise model to prevent the convergence of the network towards the identity mapping, and introduce an original Stain noise model for that purpose. We show that this model favors the reconstruction of clean images from arbitrary real-world images, regardless of the actual defects appearance. In addition to demonstrating the relevance of our approach, our validation provides the first consistent assessment of reconstruction-based methods, by comparing their performance over the MVTec AD dataset [1], both for pixel- and image-wise anomaly detection. Our implementation is available at https://github.com/anncollin/AnomalyDetection-Keras .

Suggested Citation

  • Anne-Sophie Collin & Christophe Vleeschouwer, 2022. "Joint Use of Skip Connections and Synthetic Corruption for Anomaly Detection with Autoencoders," Springer Series in Reliability Engineering, in: Kim Phuc Tran (ed.), Control Charts and Machine Learning for Anomaly Detection in Manufacturing, pages 187-215, Springer.
  • Handle: RePEc:spr:ssrchp:978-3-030-83819-5_8
    DOI: 10.1007/978-3-030-83819-5_8
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