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Adversarial reconstruction loss for domain generalization

Bekkouch, Imad Eddine Ibrahim; Nicolae, Dragoş Constantin; Khan, Adil; Kazmi, S. M. Ahsan; Khattak, Asad Masood; Ibragimov, Bulat

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Authors

Imad Eddine Ibrahim Bekkouch

Dragoş Constantin Nicolae

Adil Khan

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Ahsan Kazmi Ahsan.Kazmi@uwe.ac.uk
Senior Lecturer in Computer Science

Asad Masood Khattak

Bulat Ibragimov



Abstract

The biggest fear when deploying machine learning models to the real world is their ability to handle the new data. This problem is significant especially in medicine, where models trained on rich high-quality data extracted from large hospitals do not scale to small regional hospitals. One of the clinical challenges addressed in this work is magnetic resonance image generalization for improved visualization and diagnosis of hip abnormalities such as femoroacetabular impingement and dysplasia. Domain Generalization (DG) is a field in machine learning that tries to solve the model's dependency on the training data by leveraging many related but different data sources. We present a new method for DG that is both efficient and fast, unlike the most current state of art methods, which add a substantial computational burden making it hard to fine-tune. Our model trains an autoencoder setting on top of the classifier, but the encoder is trained on the adversarial reconstruction loss forcing it to forget style information while extracting features useful for classification. Our approach aims to force the encoder to generate domain-invariant representations that are still category informative by pushing it in both directions. Our method has proven universal and was validated on four different benchmarks for domain generalization, outperforming state of the art on RMNIST, VLCS and IXMAS with a 0.70% increase in accuracy and providing comparable results on PACS with a 0.02% difference. Our method was also evaluated for unsupervised domain adaptation and has shown to be quite an effective method against over-fitting.

Journal Article Type Article
Acceptance Date Mar 6, 2021
Online Publication Date Mar 15, 2021
Publication Date Mar 23, 2021
Deposit Date Jun 24, 2023
Publicly Available Date Jun 28, 2023
Journal IEEE Access
Electronic ISSN 2169-3536
Publisher Institute of Electrical and Electronics Engineers (IEEE)
Peer Reviewed Peer Reviewed
Volume 9
Pages 42424-42437
DOI https://doi.org/10.1109/ACCESS.2021.3066041
Keywords Computer vision, deep learning, domain adaptation, domain generalization, transfer learning
Public URL https://uwe-repository.worktribe.com/output/10582746
Publisher URL https://ieeexplore.ieee.org/document/9378518

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