Long-tailed image recognition presents massive challenges to deep learning systems since the imbalance between majority (head) classes and minority (tail) classes severely skews the data-driven deep neural networks. Previous methods tackle with data imbalance from the viewpoints of data distribution, feature space, and model design, etc. In this work, instead of directly learning a recognition model, we suggest confronting the bottleneck of head-to-tail bias before classifier learning, from the previously omitted perspective of balancing label space. To alleviate the head-to-tail bias, we propose a concise paradigm by progressively adjusting label space and dividing the head classes and tail classes, dynamically constructing balance from im...
The success of deep learning depends on large-scale and well-curated training data, while data in re...
Real-world visual data often exhibits a long-tailed distribution, where some “head” classes have a l...
Thesis (Master's)--University of Washington, 2023In many real-world applications, the frequency dist...
Deep learning enables impressive performance in image recognition using large-scale artificially-bal...
Deep learning algorithms face great challenges with long-tailed data distribution which, however, is...
The long-tailed class distribution in visual recognition tasks poses great challenges for neural net...
The visual world naturally exhibits an imbalance in the number of object or scene instances resultin...
Recently, large-scale pre-trained vision-language models have presented benefits for alleviating cla...
10.13039/501100001809-National Natural Science Foundation of China (Grant Number: 62076033 and U1931...
International audienceLearning from imbalanced datasets remains a significant challenge for real-wor...
Although contrastive learning methods have shown prevailing performance on a variety of representati...
Real-world data often have a long-tailed distribution, where the number of samples per class is not ...
The heavy reliance on data is one of the major reasons that currently limit the development of deep ...
While the novel class discovery has recently made great progress, existing methods typically focus o...
This paper introduces a two-stage framework designed to enhance long-tail class incremental learning...
The success of deep learning depends on large-scale and well-curated training data, while data in re...
Real-world visual data often exhibits a long-tailed distribution, where some “head” classes have a l...
Thesis (Master's)--University of Washington, 2023In many real-world applications, the frequency dist...
Deep learning enables impressive performance in image recognition using large-scale artificially-bal...
Deep learning algorithms face great challenges with long-tailed data distribution which, however, is...
The long-tailed class distribution in visual recognition tasks poses great challenges for neural net...
The visual world naturally exhibits an imbalance in the number of object or scene instances resultin...
Recently, large-scale pre-trained vision-language models have presented benefits for alleviating cla...
10.13039/501100001809-National Natural Science Foundation of China (Grant Number: 62076033 and U1931...
International audienceLearning from imbalanced datasets remains a significant challenge for real-wor...
Although contrastive learning methods have shown prevailing performance on a variety of representati...
Real-world data often have a long-tailed distribution, where the number of samples per class is not ...
The heavy reliance on data is one of the major reasons that currently limit the development of deep ...
While the novel class discovery has recently made great progress, existing methods typically focus o...
This paper introduces a two-stage framework designed to enhance long-tail class incremental learning...
The success of deep learning depends on large-scale and well-curated training data, while data in re...
Real-world visual data often exhibits a long-tailed distribution, where some “head” classes have a l...
Thesis (Master's)--University of Washington, 2023In many real-world applications, the frequency dist...