Semantic Segmentation on Cilia Images Using Tiramisu Network in PyTorch.
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Updated
Apr 6, 2018 - Jupyter Notebook
Semantic Segmentation on Cilia Images Using Tiramisu Network in PyTorch.
This repository contains few Convolution based networks implemented for detecting cilia which is completed on CSCI 8360, Data Science Practicum at the University of Georgia, Spring 2018.
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