Litcius/Paper detail

Test-time Fourier Style Calibration for Domain Generalization

Xingchen Zhao, Chang Liu, Anthony Sicilia, Seong Jae Hwang, Yun Fu

2022Proceedings of the Thirty-First International Joint Conference on Artificial Intelligence24 citationsDOIOpen Access PDF

Abstract

The topic of generalizing machine learning models learned on a collection of source domains to unknown target domains is challenging. While many domain generalization (DG) methods have achieved promising results, they primarily rely on the source domains at train-time without manipulating the target domains at test-time. Thus, it is still possible that those methods can overfit to source domains and perform poorly on target domains. Driven by the observation that domains are strongly related to styles, we argue that reducing the gap between source and target styles can boost models’ generalizability. To solve the dilemma of having no access to the target domain during training, we introduce Test-time Fourier Style Calibration (TF-Cal) for calibrating the target domain style on the fly during testing. To access styles, we utilize Fourier transformation to decompose features into amplitude (style) features and phase (semantic) features. Furthermore, we present an effective technique to Augment Amplitude Features (AAF) to complement TF-Cal. Extensive experiments on several popular DG benchmarks and a segmentation dataset for medical images demonstrate that our method outperforms state-of-the-art methods.

Topics & Concepts

Computer scienceOverfittingGeneralizationArtificial intelligenceGeneralizability theoryFourier transformDomain (mathematical analysis)Fourier domainCalibrationMachine learningPattern recognition (psychology)AlgorithmMathematicsArtificial neural networkMathematical analysisStatisticsDomain Adaptation and Few-Shot LearningMultimodal Machine Learning ApplicationsTopic Modeling
Test-time Fourier Style Calibration for Domain Generalization | Litcius