
# UniFMIR: Pre-training a Foundation Model for Universal Fluorescence Microscopy Image RestorationThis model is a Fluorescence Microscopy Denoising model. It is derivated from our foundational model, UniFMIR, and finetuned for Planaria dataset from [CARE dataset](https://publications.mpi-cbg.de/publications-sites/7207/). The input must be an image with 1 channels and BCYX axis. The output is an image with 1 channel. Please check the Github repository [UniFMIR](https://github.com/cxm12/UNiFMIR/) for details.
image-restoration, pytorch, bioimage.io, fluorescence-light-microscopy, 2d
image-restoration, pytorch, bioimage.io, fluorescence-light-microscopy, 2d
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