For medical imaging
applications, it is not straightforward to create a large database due to high
costs associated with acquiring the data, patent privacy issues, and challenges
in pooling data from multiple medical institutions. Generating high-resolution
medical images from the latent noise vector could potentially mitigate training
data size issues in applying DNN to medical imaging. This could facilitate objective
comparisons between the different machine learning algorithms in medical
imaging. In this study, progressive growing strategy is considered to train the
GAN stably
and generate
super resolution brain datasets from noise vector.
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