Mixed Transformer UNet for Medical Image Segmentation

Overview

MT-UNet

Update 2021/11/19

  • Thank you for your interest in our work. We have uploaded the code of our MTUNet to help peers conduct further research on it. However, rest of the codes (such as the training and testing codes) are currently not so well organized, and we plan to release them upon paper publication. It also should be noted that they are still avaliable right now with a rough appearance. Please contact us for these codes if you are new to this field or having difficulty in applying our model to your own dataset.

This is the official implementation for our ICASSP2022 paper MIXED TRANSFORMER UNET FOR MEDICAL IMAGE SEGMENTATION

The entire code will be released upon paper publication.

Owner
dotman
Get yourself a cup of tea. ˊ_>ˋ旦
dotman
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