ClusT3: Information Invariant Test-Time Training

Deep Learning models have shown remarkable performance in a broad range of vision tasks. However, they are often vulnerable against domain shifts at test-time. Test-time training (TTT) methods have been developed in an attempt to mitigate these vulnerabilities, where a secondary task is solved at tr...

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Hauptverfasser: Hakim, Gustavo A. Vargas, Osowiechi, David, Noori, Mehrdad, Cheraghalikhani, Milad, Ayed, Ismail Ben, Desrosiers, Christian
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Osowiechi, David
Noori, Mehrdad
Cheraghalikhani, Milad
Ayed, Ismail Ben
Desrosiers, Christian
description Deep Learning models have shown remarkable performance in a broad range of vision tasks. However, they are often vulnerable against domain shifts at test-time. Test-time training (TTT) methods have been developed in an attempt to mitigate these vulnerabilities, where a secondary task is solved at training time simultaneously with the main task, to be later used as an self-supervised proxy task at test-time. In this work, we propose a novel unsupervised TTT technique based on the maximization of Mutual Information between multi-scale feature maps and a discrete latent representation, which can be integrated to the standard training as an auxiliary clustering task. Experimental results demonstrate competitive classification performance on different popular test-time adaptation benchmarks.
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Computer Science - Computer Vision and Pattern Recognition
Computer Science - Learning
title ClusT3: Information Invariant Test-Time Training
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