While deep neural networks can attain good accuracy on in-distribution test points, many applications require robustness even in the face of unexpected perturbations in the input, changes in the domain, or other sources of distribution shift. We study the problem of test time robustification, i.e., using the test input to improve model robustness. Recent prior works have proposed methods for test time adaptation, however, they each introduce additional assumptions, such as access to multiple test points, that prevent widespread adoption. In this work, we aim to study and devise methods that make no assumptions about the model training process and are broadly applicable at test time. We propose a simple approach that can be used in any test ...
Current state-of-the-art employs approximate multipliers to address the highly increased power deman...
Communicating the predictive uncertainty of deep neural networks transparently and reliably is impor...
Deep neural networks are one of the most successful classifiers across different domains. However, d...
Test-time adaptation harnesses test inputs to improve the accuracy of a model trained on source data...
Test-time adaptation (TTA) seeks to tackle potential distribution shifts between training and testin...
Test-time adaptation (TTA) is a technique aimed at enhancing the generalization performance of model...
Fully Test-Time Adaptation (TTA), which aims at adapting models to data drifts, has recently attract...
The performance decay experienced by deep neural networks (DNNs) when confronted with distributional...
In general, Deep Neural Networks (DNNs) are evaluated by the generalization performance measured on ...
We introduce several new datasets namely ImageNet-A/O and ImageNet-R as well as a synthetic environm...
Test-Time Augmentation (TTA) is a popular technique that aims to improve the accuracy of Convolution...
Deep learning based image reconstruction methods outperform traditional methods. However, neural net...
In safety-critical deep learning applications robustness measurement is a vital pre-deployment phase...
International audienceDeep neural networks often fail to generalize outside of their training distri...
When a large feedforward neural network is trained on a small training set, it typically performs po...
Current state-of-the-art employs approximate multipliers to address the highly increased power deman...
Communicating the predictive uncertainty of deep neural networks transparently and reliably is impor...
Deep neural networks are one of the most successful classifiers across different domains. However, d...
Test-time adaptation harnesses test inputs to improve the accuracy of a model trained on source data...
Test-time adaptation (TTA) seeks to tackle potential distribution shifts between training and testin...
Test-time adaptation (TTA) is a technique aimed at enhancing the generalization performance of model...
Fully Test-Time Adaptation (TTA), which aims at adapting models to data drifts, has recently attract...
The performance decay experienced by deep neural networks (DNNs) when confronted with distributional...
In general, Deep Neural Networks (DNNs) are evaluated by the generalization performance measured on ...
We introduce several new datasets namely ImageNet-A/O and ImageNet-R as well as a synthetic environm...
Test-Time Augmentation (TTA) is a popular technique that aims to improve the accuracy of Convolution...
Deep learning based image reconstruction methods outperform traditional methods. However, neural net...
In safety-critical deep learning applications robustness measurement is a vital pre-deployment phase...
International audienceDeep neural networks often fail to generalize outside of their training distri...
When a large feedforward neural network is trained on a small training set, it typically performs po...
Current state-of-the-art employs approximate multipliers to address the highly increased power deman...
Communicating the predictive uncertainty of deep neural networks transparently and reliably is impor...
Deep neural networks are one of the most successful classifiers across different domains. However, d...