TL;DR
This paper introduces a conditional variance regularization method that enhances robustness of image classifiers against domain shifts in style features by leveraging limited identity information, improving accuracy across various image variations.
Contribution
The paper proposes a novel conditional variance penalty (CoRe) that uses limited ID data to improve domain shift robustness without observing the domain explicitly.
Findings
CoRe improves accuracy under domain shifts in image quality, brightness, and color.
The method is effective even with limited ID information.
Empirical results show significant robustness gains in complex style changes.
Abstract
When training a deep neural network for image classification, one can broadly distinguish between two types of latent features of images that will drive the classification. We can divide latent features into (i) "core" or "conditionally invariant" features whose distribution , conditional on the class , does not change substantially across domains and (ii) "style" features whose distribution can change substantially across domains. Examples for style features include position, rotation, image quality or brightness but also more complex ones like hair color, image quality or posture for images of persons. Our goal is to minimize a loss that is robust under changes in the distribution of these style features. In contrast to previous work, we assume that the domain itself is not observed and hence a…
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