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Tent: Fully Test-time Adaptation by Entropy Minimization

Test entropy minimization (tent) enhances generalization in image classification and domain adaptation by adapting normalization statistics and channel-wise affine transformations during test time.

Year
2020
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tent-fully-test-time-adaptation-by-entropy
Authors
5
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arxiv.org/abs/2006.10726v3ARXIV-DEFAULT
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Abstract

A model must adapt itself to generalize to new and different data during testing. In this setting of fully test-time adaptation the model has only the test data and its own parameters. We propose to adapt by test entropy minimization (tent): we optimize the model for confidence as measured by the entropy of its predictions. Our method estimates normalization statistics and optimizes channel-wise affine transformations to update online on each batch. Tent reduces generalization error for image classification on corrupted ImageNet and CIFAR-10/100 and reaches a new state-of-the-art error on ImageNet-C. Tent handles source-free domain adaptation on digit recognition from SVHN to MNIST/MNIST-M/USPS, on semantic segmentation from GTA to Cityscapes, and on the VisDA-C benchmark. These results are achieved in one epoch of test-time optimization without altering training.

Authors

5