Dynamic dual mining framework for long-tailed out-of-distribution detection


연구 분야: Databases



학회: Applied Intelligence


초록

Detecting out-of-distribution inputs is critical for the reliable and safe deployment of deep learning models in open-world environments. However, most out-of-distribution detection methods rely on the strict assumption of data balance, overlooking the reality that data often follows a long-tailed distribution in real scenarios, which negatively impacts model performance. To overcome this issue, we propose the Dynamic Dual Mining (DDM) framework, which optimally utilizes existing data by performing dual mining on in-distribution data and auxiliary outliers. DDM applies a stronger penalty to hard in-distribution samples and employs prototype-based mining strategy for outliers. Extensive experiments demonstrate that DDM effectively addresses the challenges of long-tailed out-of-distribution detection, achieving state-of-the-art results on CIFAR-10-LT and CIFAR-100-LT, while also exhibiting superior performance on the large dataset ImageNet-200-LT.


Author Profile
Bin Sheng

School of Computer Engineering and Science Shanghai University 99 Shangda Road Baoshan District 200444 Shanghai China

Andorra
Author Profile
Dengye Pan

School of Computer Engineering and Science Shanghai University 99 Shangda Road Baoshan District 200444 Shanghai China

Andorra
Author Profile
Xiaoqiang Li

School of Computer Engineering and Science Shanghai University 99 Shangda Road Baoshan District 200444 Shanghai China

Andorra

📄 논문 정보

발행 연도 2025년
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출판 국가 Andorra
사이트 Springer
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