一般化
计算机科学
傅里叶变换
人工智能
频域
正规化(语言学)
算法
领域(数学分析)
傅里叶级数
数学
计算机视觉
数学分析
作者
Qinwei Xu,Ruipeng Zhang,Ya Zhang,Yanfeng Wang,Qi Tian
标识
DOI:10.1109/cvpr46437.2021.01415
摘要
Modern deep neural networks suffer from performance degradation when evaluated on testing data under different distributions from training data. Domain generalization aims at tackling this problem by learning transferable knowledge from multiple source domains in order to generalize to unseen target domains. This paper introduces a novel Fourier-based perspective for domain generalization. The main assumption is that the Fourier phase information contains high-level semantics and is not easily affected by domain shifts. To force the model to capture phase information, we develop a novel Fourier-based data augmentation strategy called amplitude mix which linearly interpolates between the amplitude spectrums of two images. A dual-formed consistency loss called co-teacher regularization is further introduced between the predictions induced from original and augmented images. Extensive experiments on three benchmarks have demonstrated that the proposed method is able to achieve state-of-the-arts performance for domain generalization.
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