MT3: Meta Test-Time Training for Self-Supervised Test-Time Adaption

03/30/2021
by   Alexander Bartler, et al.
0

An unresolved problem in Deep Learning is the ability of neural networks to cope with domain shifts during test-time, imposed by commonly fixing network parameters after training. Our proposed method Meta Test-Time Training (MT3), however, breaks this paradigm and enables adaption at test-time. We combine meta-learning, self-supervision and test-time training to learn to adapt to unseen test distributions. By minimizing the self-supervised loss, we learn task-specific model parameters for different tasks. A meta-model is optimized such that its adaption to the different task-specific models leads to higher performance on those tasks. During test-time a single unlabeled image is sufficient to adapt the meta-model parameters. This is achieved by minimizing only the self-supervised loss component resulting in a better prediction for that image. Our approach significantly improves the state-of-the-art results on the CIFAR-10-Corrupted image classification benchmark. Our implementation is available on GitHub.

READ FULL TEXT

page 1

page 8

research
05/18/2022

TTAPS: Test-Time Adaption by Aligning Prototypes using Self-Supervision

Nowadays, deep neural networks outperform humans in many tasks. However,...
research
09/29/2019

Test-Time Training for Out-of-Distribution Generalization

We introduce a general approach, called test-time training, for improvin...
research
02/16/2022

Learning to Generalize across Domains on Single Test Samples

We strive to learn a model from a set of source domains that generalizes...
research
10/20/2022

TTTFlow: Unsupervised Test-Time Training with Normalizing Flow

A major problem of deep neural networks for image classification is thei...
research
10/08/2018

CAML: Fast Context Adaptation via Meta-Learning

We propose CAML, a meta-learning method for fast adaptation that partiti...
research
05/09/2023

Adaptive Domain Generalization for Digital Pathology Images

In AI-based histopathology, domain shifts are common and well-studied. H...
research
06/06/2020

Self-Supervised Dynamic Networks for Covariate Shift Robustness

As supervised learning still dominates most AI applications, test-time p...

Please sign up or login with your details

Forgot password? Click here to reset