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Unet and Unet++: multiple classification using Pytorch

This repository contains code for a multiple classification image segmentation model based on UNet and UNet++

Usage

Note : Use Python 3

Dataset

make sure to put the files as the following structure:

data
├── images
|   ├── 0a7e06.jpg
│   ├── 0aab0a.jpg
│   ├── 0b1761.jpg
│   ├── ...
|
└── masks
    ├── 0a7e06.png
    ├── 0aab0a.png
    ├── 0b1761.png
    ├── ...

mask is a single-channel category index. For example, your dataset has three categories, mask should be 8-bit images with value 0,1,2 as the categorical value, this image looks black.

Demo dataset

You can download the demo dataset from here to data/

Training

python train.py

inference

python inference.py -m ./data/checkpoints/epoch_10.pth -i ./data/test/input -o ./data/test/output

If you want to highlight your mask with color, you can

python inference_color.py -m ./data/checkpoints/epoch_10.pth -i ./data/test/input -o ./data/test/output

Tensorboard

You can visualize in real time the train and val losses, along with the model predictions with tensorboard:

tensorboard --logdir=runs