Effective semi-supervised learning (SSL) in medical image analysis (MIA) must
address two challenges: 1) work effectively on both multi-class (e.g., lesion
classification) and multi-label (e.g., multiple-disease diagnosis) problems,
and 2) handle imbalanced learning (because of the high variance in disease
prevalence). One strategy to explore in SSL MIA is based on the pseudo
labelling strategy, but it has a few shortcomings. Pseudo-labelling has in
general lower accuracy than consistency learning, it is not specifically
designed for both multi-class and multi-label problems, and it can be
challenged by imbalanced learning. In this paper, unlike traditional methods
that select confident pseudo label by threshold, we propose a new SSL
algorithm, called anti-curriculum pseudo-labelling (ACPL), which introduces
novel techniques to select informative unlabelled samples, improving training
balance and allowing the model to work for both multi-label and multi-class
problems, and to estimate pseudo labels by an accurate ensemble of classifiers
(improving pseudo label accuracy). We run extensive experiments to evaluate
ACPL on two public medical image classification benchmarks: Chest X-Ray14 for
thorax disease multi-label classification and ISIC2018 for skin lesion
multi-class classification. Our method outperforms previous SOTA SSL methods on
both datasets
Описание
ACPL: Anti-curriculum Pseudo-labelling for Semi-supervised Medical Image Classification
%0 Generic
%1 liu2021anticurriculum
%A Liu, Fengbei
%A Tian, Yu
%A Chen, Yuanhong
%A Liu, Yuyuan
%A Belagiannis, Vasileios
%A Carneiro, Gustavo
%D 2021
%K segmentation
%T ACPL: Anti-curriculum Pseudo-labelling for Semi-supervised Medical Image
Classification
%U http://arxiv.org/abs/2111.12918
%X Effective semi-supervised learning (SSL) in medical image analysis (MIA) must
address two challenges: 1) work effectively on both multi-class (e.g., lesion
classification) and multi-label (e.g., multiple-disease diagnosis) problems,
and 2) handle imbalanced learning (because of the high variance in disease
prevalence). One strategy to explore in SSL MIA is based on the pseudo
labelling strategy, but it has a few shortcomings. Pseudo-labelling has in
general lower accuracy than consistency learning, it is not specifically
designed for both multi-class and multi-label problems, and it can be
challenged by imbalanced learning. In this paper, unlike traditional methods
that select confident pseudo label by threshold, we propose a new SSL
algorithm, called anti-curriculum pseudo-labelling (ACPL), which introduces
novel techniques to select informative unlabelled samples, improving training
balance and allowing the model to work for both multi-label and multi-class
problems, and to estimate pseudo labels by an accurate ensemble of classifiers
(improving pseudo label accuracy). We run extensive experiments to evaluate
ACPL on two public medical image classification benchmarks: Chest X-Ray14 for
thorax disease multi-label classification and ISIC2018 for skin lesion
multi-class classification. Our method outperforms previous SOTA SSL methods on
both datasets
@misc{liu2021anticurriculum,
abstract = {Effective semi-supervised learning (SSL) in medical image analysis (MIA) must
address two challenges: 1) work effectively on both multi-class (e.g., lesion
classification) and multi-label (e.g., multiple-disease diagnosis) problems,
and 2) handle imbalanced learning (because of the high variance in disease
prevalence). One strategy to explore in SSL MIA is based on the pseudo
labelling strategy, but it has a few shortcomings. Pseudo-labelling has in
general lower accuracy than consistency learning, it is not specifically
designed for both multi-class and multi-label problems, and it can be
challenged by imbalanced learning. In this paper, unlike traditional methods
that select confident pseudo label by threshold, we propose a new SSL
algorithm, called anti-curriculum pseudo-labelling (ACPL), which introduces
novel techniques to select informative unlabelled samples, improving training
balance and allowing the model to work for both multi-label and multi-class
problems, and to estimate pseudo labels by an accurate ensemble of classifiers
(improving pseudo label accuracy). We run extensive experiments to evaluate
ACPL on two public medical image classification benchmarks: Chest X-Ray14 for
thorax disease multi-label classification and ISIC2018 for skin lesion
multi-class classification. Our method outperforms previous SOTA SSL methods on
both datasets},
added-at = {2022-07-17T16:10:01.000+0200},
author = {Liu, Fengbei and Tian, Yu and Chen, Yuanhong and Liu, Yuyuan and Belagiannis, Vasileios and Carneiro, Gustavo},
biburl = {https://www.bibsonomy.org/bibtex/2da5d29b0eae7354d2788cdb70b50aa47/redtedtezza},
description = {ACPL: Anti-curriculum Pseudo-labelling for Semi-supervised Medical Image Classification},
interhash = {d646ff62546977f8e9e48cc3329a499d},
intrahash = {da5d29b0eae7354d2788cdb70b50aa47},
keywords = {segmentation},
note = {cite arxiv:2111.12918Comment: CVPR 2022},
timestamp = {2022-07-17T16:10:01.000+0200},
title = {ACPL: Anti-curriculum Pseudo-labelling for Semi-supervised Medical Image
Classification},
url = {http://arxiv.org/abs/2111.12918},
year = 2021
}