21 research outputs found
Boundary and Entropy-driven Adversarial Learning for Fundus Image Segmentation
Accurate segmentation of the optic disc (OD) and cup (OC)in fundus images
from different datasets is critical for glaucoma disease screening. The
cross-domain discrepancy (domain shift) hinders the generalization of deep
neural networks to work on different domain datasets.In this work, we present
an unsupervised domain adaptation framework,called Boundary and Entropy-driven
Adversarial Learning (BEAL), to improve the OD and OC segmentation performance,
especially on the ambiguous boundary regions. In particular, our proposed BEAL
frame-work utilizes the adversarial learning to encourage the boundary
prediction and mask probability entropy map (uncertainty map) of the target
domain to be similar to the source ones, generating more accurate boundaries
and suppressing the high uncertainty predictions of OD and OC segmentation. We
evaluate the proposed BEAL framework on two public retinal fundus image
datasets (Drishti-GS and RIM-ONE-r3), and the experiment results demonstrate
that our method outperforms the state-of-the-art unsupervised domain adaptation
methods. Codes will be available at https://github.com/EmmaW8/BEAL.Comment: Accepted at MICCAI 201