Domain generalization aims to learn a model that can generalize well on the unseen test dataset, i.e., out-of-distribution data, which has different distribution from the training dataset. To address domain generalization in computer vision, we introduce the loss landscape theory into this field. Specifically, we bootstrap the generalization ability of the deep learning model from the loss landscape perspective in four aspects, including backbone, regularization, training paradigm, and learning rate. We verify the proposed theory on the NICO++, PACS, and VLCS datasets by doing extensive ablation studies as well as visualizations. In addition, we apply this theory in the ECCV 2022 NICO Challenge1 and achieve the 3rd place without using any d...
There are many computer vision applications including object segmentation, classification, object de...
There are many computer vision applications including object segmentation, classification, object de...
A machine learning (ML) system must learn not only to match the output of a target function on a tra...
Machine learning models that can generalize to unseen domains are essential when applied in real-wor...
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...
The distribution shifts between training and test data typically undermine the performance of deep l...
Domain generalization (DG) is a branch of transfer learning that aims to train the learning models o...
Traditional deep learning algorithms often fail to generalize when they are tested outside of the do...
In real-world applications, deep learning models often run in non-stationary environments where the ...
There are many computer vision applications including object segmentation, classification, object de...
Deep neural networks suffer from significant performance deterioration when there exists distributio...
The problem of domain generalization is to learn from multiple training domains, and extract a domai...
There are many computer vision applications including object segmentation, classification, object de...
There are many computer vision applications including object segmentation, classification, object de...
There are many computer vision applications including object segmentation, classification, object de...
There are many computer vision applications including object segmentation, classification, object de...
A machine learning (ML) system must learn not only to match the output of a target function on a tra...
Machine learning models that can generalize to unseen domains are essential when applied in real-wor...
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...
The distribution shifts between training and test data typically undermine the performance of deep l...
Domain generalization (DG) is a branch of transfer learning that aims to train the learning models o...
Traditional deep learning algorithms often fail to generalize when they are tested outside of the do...
In real-world applications, deep learning models often run in non-stationary environments where the ...
There are many computer vision applications including object segmentation, classification, object de...
Deep neural networks suffer from significant performance deterioration when there exists distributio...
The problem of domain generalization is to learn from multiple training domains, and extract a domai...
There are many computer vision applications including object segmentation, classification, object de...
There are many computer vision applications including object segmentation, classification, object de...
There are many computer vision applications including object segmentation, classification, object de...
There are many computer vision applications including object segmentation, classification, object de...
A machine learning (ML) system must learn not only to match the output of a target function on a tra...