Despite being very powerful in standard learning settings, deep learning models can be extremely brittle when deployed in scenarios different from those on which they were trained. Domain generalization methods investigate this problem and data augmentation strategies have shown to be helpful tools to increase data variability, supporting model robustness across domains. In our work we focus on style transfer data augmentation and we present how it can be implemented with a simple and inexpensive strategy to improve generalization. Moreover, we analyze the behavior of current state of the art domain generalization methods when integrated with this augmentation solution: our thorough experimental evaluation shows that their original effect a...
Single domain generalization aims to enhance the ability of the model to generalize to unknown domai...
Improving model's generalizability against domain shifts is crucial, especially for safety-critical ...
Traditional deep learning algorithms often fail to generalize when they are tested outside of the do...
Despite being very powerful in standard learning settings, deep learning models can be extremely bri...
Domain Generalization (DG) studies the capability of a deep learning model to generalize to out-of-t...
The problem of domain generalization is to learn from multiple training domains, and extract a domai...
Machine learning models that can generalize to unseen domains are essential when applied in real-wor...
Machine learning models rely on various assumptions to attain high accuracy. One of the preliminary ...
Visual recognition systems are meant to work in the real world. For this to happen, they must work r...
Improving model's generalizability against domain shifts is crucial,especially for safety-critical a...
Deep neural networks suffer from significant performance deterioration when there exists distributio...
Machine learning systems generally assume that the training and testing distributions are the same. ...
Domain generalization is the task of learning models that generalize to unseen target domains. We pr...
Domain generalization (DG) is a prevalent problem in real-world applications, which aims to train we...
While deep neural networks attain state-of-the-art performance for computer vision tasks with the he...
Single domain generalization aims to enhance the ability of the model to generalize to unknown domai...
Improving model's generalizability against domain shifts is crucial, especially for safety-critical ...
Traditional deep learning algorithms often fail to generalize when they are tested outside of the do...
Despite being very powerful in standard learning settings, deep learning models can be extremely bri...
Domain Generalization (DG) studies the capability of a deep learning model to generalize to out-of-t...
The problem of domain generalization is to learn from multiple training domains, and extract a domai...
Machine learning models that can generalize to unseen domains are essential when applied in real-wor...
Machine learning models rely on various assumptions to attain high accuracy. One of the preliminary ...
Visual recognition systems are meant to work in the real world. For this to happen, they must work r...
Improving model's generalizability against domain shifts is crucial,especially for safety-critical a...
Deep neural networks suffer from significant performance deterioration when there exists distributio...
Machine learning systems generally assume that the training and testing distributions are the same. ...
Domain generalization is the task of learning models that generalize to unseen target domains. We pr...
Domain generalization (DG) is a prevalent problem in real-world applications, which aims to train we...
While deep neural networks attain state-of-the-art performance for computer vision tasks with the he...
Single domain generalization aims to enhance the ability of the model to generalize to unknown domai...
Improving model's generalizability against domain shifts is crucial, especially for safety-critical ...
Traditional deep learning algorithms often fail to generalize when they are tested outside of the do...