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Wasserstein Adversarial Regularization for Learning With Label Noise

Kilian Fatras, Bharath Bhushan Damodaran, Sylvain Lobry, Rémi Flamary, Devis Tuia, Nicolas Courty

2021IEEE Transactions on Pattern Analysis and Machine Intelligence18 citationsDOIOpen Access PDF

Abstract

Noisy labels often occur in vision datasets, especially when they are obtained from crowdsourcing or Web scraping. We propose a new regularization method, which enables learning robust classifiers in presence of noisy data. To achieve this goal, we propose a new adversarial regularization scheme based on the Wasserstein distance. Using this distance allows taking into account specific relations between classes by leveraging the geometric properties of the labels space. Our Wasserstein Adversarial Regularization (WAR) encodes a selective regularization, which promotes smoothness of the classifier between some classes, while preserving sufficient complexity of the decision boundary between others. We first discuss how and why adversarial regularization can be used in the context of noise and then show the effectiveness of our method on five datasets corrupted with noisy labels: in both benchmarks and real datasets, WAR outperforms the state-of-the-art competitors.

Topics & Concepts

Adversarial systemRegularization (linguistics)Computer scienceArtificial intelligenceClassifier (UML)Machine learningPattern recognition (psychology)Machine Learning and Data ClassificationIndustrial Vision Systems and Defect DetectionAdvanced Neural Network Applications