Semantic segmentation is a high level computer vision task that assigns a label for each pixel of an image. It is challenging to deal with extremely-imbalanced data in which the ratio of target pixels to background pixels is lower than 1:1000. Such severe input imbalance leads to output imbalance for poor model training. This paper considers three issues for extremely-imbalanced data: inspired by the region-based Dice loss, an implicit measure for the output imbalance is proposed, and an adaptive algorithm is designed for guiding the output imbalance hyperparameter selection; then it is generalized to distribution-based loss for dealing with output imbalance; and finally a compound loss with our adaptive hyperparameter selection algorithm c...
Deep-learning has proved in recent years to be a powerful tool for image analysis and is now widely ...
Any computer vision application development starts off by acquiring images and data, then preprocess...
Imbalanced learning is a challenging task in machine learning, faced by practitioners, and intensive...
To overcome the data-hungry challenge, we have proposed a semi-supervised contrastive learning frame...
Deep convolutional neural networks have proven to be remarkably effective in semantic segmentation t...
Imbalanced training data is a common problem in machine learning applications. Thisproblem refers to...
Deep convolutional neural networks have proven to be remarkably effective in semantic segmentation t...
We live in a vast ocean of data, and deep neural networks are no exception to this. However, this da...
The contextual information is critical for various computer vision tasks, previous works commonly de...
Abstract The class imbalance problem exists widely in vision data. In these imbalanced datasets, th...
Deep learning methods have proven their potential in semantic segmentation. However, they depend on ...
Over the past decade, previous balanced datasets have been used to advance deep learning algorithms ...
Recently, semantic segmentation – assigning a categorical label to each pixel in an im- age – plays ...
Class imbalance poses a challenge for developing unbiased, accurate predictive models. In particular...
International audienceThe utilization of artificial intelligence (AI) in healthcare has several bene...
Deep-learning has proved in recent years to be a powerful tool for image analysis and is now widely ...
Any computer vision application development starts off by acquiring images and data, then preprocess...
Imbalanced learning is a challenging task in machine learning, faced by practitioners, and intensive...
To overcome the data-hungry challenge, we have proposed a semi-supervised contrastive learning frame...
Deep convolutional neural networks have proven to be remarkably effective in semantic segmentation t...
Imbalanced training data is a common problem in machine learning applications. Thisproblem refers to...
Deep convolutional neural networks have proven to be remarkably effective in semantic segmentation t...
We live in a vast ocean of data, and deep neural networks are no exception to this. However, this da...
The contextual information is critical for various computer vision tasks, previous works commonly de...
Abstract The class imbalance problem exists widely in vision data. In these imbalanced datasets, th...
Deep learning methods have proven their potential in semantic segmentation. However, they depend on ...
Over the past decade, previous balanced datasets have been used to advance deep learning algorithms ...
Recently, semantic segmentation – assigning a categorical label to each pixel in an im- age – plays ...
Class imbalance poses a challenge for developing unbiased, accurate predictive models. In particular...
International audienceThe utilization of artificial intelligence (AI) in healthcare has several bene...
Deep-learning has proved in recent years to be a powerful tool for image analysis and is now widely ...
Any computer vision application development starts off by acquiring images and data, then preprocess...
Imbalanced learning is a challenging task in machine learning, faced by practitioners, and intensive...