TY - JOUR
T1 - Exploring Feature Representation Learning for Semi-Supervised Medical Image Segmentation
AU - Wu, Huimin
AU - Li, Xiaomeng
AU - Cheng, Kwang Ting
N1 - Publisher Copyright:
© 2012 IEEE.
PY - 2024
Y1 - 2024
N2 - This article presents a simple yet effective two-stage framework for semi-supervised medical image segmentation. Unlike prior state-of-the-art semi-supervised segmentation methods that predominantly rely on pseudo supervision directly on predictions, such as consistency regularization and pseudo labeling, our key insight is to explore the feature representation learning with labeled and unlabeled (i.e., pseudo labeled) images to regularize a more compact and better-separated feature space, which paves the way for low-density decision boundary learning and therefore enhances the segmentation performance. A stage-adaptive contrastive learning method is proposed, containing a boundary-aware contrastive loss that takes advantage of the labeled images in the first stage, as well as a prototype-aware contrastive loss to optimize both labeled and pseudo labeled images in the second stage. To obtain more accurate prototype estimation, which plays a critical role in prototype-aware contrastive learning, we present an aleatoric uncertainty-aware method to generate higher quality pseudo labels. Aleatoric-uncertainty adaptive (AUA) adaptively regularizes prediction consistency by taking advantage of image ambiguity, which, given its significance, is underexplored by existing works. Our method achieves the best results on three public medical image segmentation benchmarks.
AB - This article presents a simple yet effective two-stage framework for semi-supervised medical image segmentation. Unlike prior state-of-the-art semi-supervised segmentation methods that predominantly rely on pseudo supervision directly on predictions, such as consistency regularization and pseudo labeling, our key insight is to explore the feature representation learning with labeled and unlabeled (i.e., pseudo labeled) images to regularize a more compact and better-separated feature space, which paves the way for low-density decision boundary learning and therefore enhances the segmentation performance. A stage-adaptive contrastive learning method is proposed, containing a boundary-aware contrastive loss that takes advantage of the labeled images in the first stage, as well as a prototype-aware contrastive loss to optimize both labeled and pseudo labeled images in the second stage. To obtain more accurate prototype estimation, which plays a critical role in prototype-aware contrastive learning, we present an aleatoric uncertainty-aware method to generate higher quality pseudo labels. Aleatoric-uncertainty adaptive (AUA) adaptively regularizes prediction consistency by taking advantage of image ambiguity, which, given its significance, is underexplored by existing works. Our method achieves the best results on three public medical image segmentation benchmarks.
KW - Aleatoric uncertainty
KW - consistency regularization
KW - contrastive learning
KW - pseudo labeling
KW - semi-supervised segmentation
UR - https://www.webofscience.com/wos/woscc/full-record/WOS:001043280600001
UR - https://openalex.org/W4385338555
UR - https://www.scopus.com/pages/publications/85166325709
U2 - 10.1109/TNNLS.2023.3296652
DO - 10.1109/TNNLS.2023.3296652
M3 - Journal Article
C2 - 37506015
SN - 2162-237X
VL - 35
SP - 16589
EP - 16601
JO - IEEE Transactions on Neural Networks and Learning Systems
JF - IEEE Transactions on Neural Networks and Learning Systems
IS - 11
ER -