MDT-Net: Multi-domain Transfer by Perceptual Supervision for Unpaired Images in OCT Scan
Weinan Song, Gaurav Fotedar, Nima Tajbakhsh, Ziheng Zhou, Lei He, and, Xiaowei Ding

TL;DR
This paper introduces MDT-Net, a multi-domain transfer network using perceptual supervision for unpaired OCT images, improving domain adaptation and data augmentation for better segmentation performance.
Contribution
The paper presents a novel MDT-Net architecture with a single encoder-decoder and multiple transfer modules, reducing complexity in multi-domain OCT image translation.
Findings
Improves OCT image translation across multiple scanner domains.
Enhances segmentation accuracy through augmented training data.
Demonstrates efficiency and effectiveness in multi-domain transfer.
Abstract
Deep learning models tend to underperform in the presence of domain shifts. Domain transfer has recently emerged as a promising approach wherein images exhibiting a domain shift are transformed into other domains for augmentation or adaptation. However, with the absence of paired and annotated images, models merely learned by adversarial loss and cycle consistency loss could result in poor consistency of anatomy structures during the translation. Additionally, the complexity of learning multi-domain transfer could significantly increase with the number of target domains and source images. In this paper, we propose a multi-domain transfer network, named MDT-Net, to address the limitations above through perceptual supervision. Specifically, our model consists of a single encoder-decoder network and multiple domain-specific transfer modules to disentangle feature representations of the…
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Taxonomy
MethodsCycle Consistency Loss
