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Selective Guided Adversarial Adaptation for Cross-device OCT Images Segmentation

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Selective-Guided-Adversarial-Adaptation

Selective Guided Adversarial Adaptation for Cross-device OCT Images Segmentation

Overview


The yellow and the green arrows indicate the source and target domain paths, respectively. The black dashed arrows denote the selective parameter guidance, and the red dashed arrows represent the adversarial learning.

Requirements

image image image

Get Started

Using the train_SGAA.py and test.py to train and test the model on your own dataset,respectively.

COLA: Cross-device OCT LAyer segmentation Dataset

The information about the COLA dataset could be seen in the following link: https://imed.nimte.ac.cn/cola.html

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Selective Guided Adversarial Adaptation for Cross-device OCT Images Segmentation


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