This paper introduces a two-stage framework designed to enhance long-tail class incremental learning, enabling the model to progressively learn new classes, while mitigating catastrophic forgetting in the context of long-tailed data distributions. Addressing the challenge posed by the under-representation of tail classes in long-tail class incremental learning, our approach achieves classifier alignment by leveraging global variance as an informative measure and class prototypes in the second stage. This process effectively captures class properties and eliminates the need for data balancing or additional layer tuning. Alongside traditional class incremental learning losses in the first stage, the proposed approach incorporates mixup classe...
Many real-world recognition problems are characterized by long-tailed label distributions. These dis...
Class-incremental learning (CIL) is a challenging task that involves continually learning to categor...
In class-incremental learning, a learning agent faces a stream of data with the goal of learning new...
Recently, large-scale pre-trained vision-language models have presented benefits for alleviating cla...
The long-tailed class distribution in visual recognition tasks poses great challenges for neural net...
Long-tailed image recognition presents massive challenges to deep learning systems since the imbalan...
Online continual learning is a challenging problem where models must learn from a non-stationary dat...
The visual world naturally exhibits an imbalance in the number of object or scene instances resultin...
Label noise and class imbalance commonly coexist in real-world data. Previous works for robust learn...
Deep learning algorithms face great challenges with long-tailed data distribution which, however, is...
Classification on long-tailed distributed data is a challenging problem, which suffers from serious ...
Long-tailed datasets, where head classes comprise much more training samples than tail classes, caus...
Although contrastive learning methods have shown prevailing performance on a variety of representati...
Despite impressive accuracy, deep neural networks are often miscalibrated and tend to overly confide...
We consider class incremental learning (CIL) problem, in which a learning agent continuously learns ...
Many real-world recognition problems are characterized by long-tailed label distributions. These dis...
Class-incremental learning (CIL) is a challenging task that involves continually learning to categor...
In class-incremental learning, a learning agent faces a stream of data with the goal of learning new...
Recently, large-scale pre-trained vision-language models have presented benefits for alleviating cla...
The long-tailed class distribution in visual recognition tasks poses great challenges for neural net...
Long-tailed image recognition presents massive challenges to deep learning systems since the imbalan...
Online continual learning is a challenging problem where models must learn from a non-stationary dat...
The visual world naturally exhibits an imbalance in the number of object or scene instances resultin...
Label noise and class imbalance commonly coexist in real-world data. Previous works for robust learn...
Deep learning algorithms face great challenges with long-tailed data distribution which, however, is...
Classification on long-tailed distributed data is a challenging problem, which suffers from serious ...
Long-tailed datasets, where head classes comprise much more training samples than tail classes, caus...
Although contrastive learning methods have shown prevailing performance on a variety of representati...
Despite impressive accuracy, deep neural networks are often miscalibrated and tend to overly confide...
We consider class incremental learning (CIL) problem, in which a learning agent continuously learns ...
Many real-world recognition problems are characterized by long-tailed label distributions. These dis...
Class-incremental learning (CIL) is a challenging task that involves continually learning to categor...
In class-incremental learning, a learning agent faces a stream of data with the goal of learning new...