TL;DR
The paper introduces DoFE, a domain-oriented feature embedding framework that enhances CNN generalization for fundus image segmentation across unseen datasets by leveraging multi-source domain knowledge.
Contribution
It proposes a novel domain knowledge pooling and feature augmentation method to improve model robustness on unseen medical imaging datasets.
Findings
Outperforms existing domain generalization methods on fundus segmentation tasks.
Effectively leverages multi-source domain knowledge for better generalization.
Achieves superior segmentation accuracy on unseen datasets.
Abstract
Deep convolutional neural networks have significantly boosted the performance of fundus image segmentation when test datasets have the same distribution as the training datasets. However, in clinical practice, medical images often exhibit variations in appearance for various reasons, e.g., different scanner vendors and image quality. These distribution discrepancies could lead the deep networks to over-fit on the training datasets and lack generalization ability on the unseen test datasets. To alleviate this issue, we present a novel Domain-oriented Feature Embedding (DoFE) framework to improve the generalization ability of CNNs on unseen target domains by exploring the knowledge from multiple source domains. Our DoFE framework dynamically enriches the image features with additional domain prior knowledge learned from multi-source domains to make the semantic features more…
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