fisherman611/unet-for-colonoscopy-polyp-segmentation

This repository offers an implementation of the UNet model tailored for semantic segmentation tasks, focusing on detecting polyps in colonoscopy images. It includes comprehensive training scripts, a configurable UNet architecture with an encoder such as ResNet, and a user-friendly inference script.

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MIT

Last pushed

May 01, 2025

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