REVA-QCAV/README.md
milesial 8b614c3e31 Modified to take any image size (with even width, height > width/2)
Former-commit-id: 2751e6a3df45c1527376a4697d3804d683095d83
2017-11-30 07:19:52 +01:00

1.5 KiB

Pytorch-UNet

Customized implementation of the U-Net in Pytorch for Kaggle's Carvana Image Masking Challenge.

This model scored a dice coefficient of 0.988423 (511 out of 735), which is bad but could be improved with more training, data augmentation, fine tuning, and playing with CRF post-processing.

The model used for the last submission is stored in the MODEL.pth file, if you wish to play with it. The data is available on the Kaggle website.

Usage

### Prediction

You can easily test the output masks on your images via the CLI. To see all options: python predict.py -h

To predict a single image and save it:

python predict.py -i image.jpg -o ouput.jpg

To predict a multiple images and show them without saving them:

python predict.py -i image1.jpg image2.jpg --viz --no-save

You can use the cpu-only version with --cpu.

You can specify which model file to use with --model MODEL.pth.

Warning

In order to process the image, it is splitted into two squares (a left on and a right one), and each square is passed into the net. The two square masks are then merged again to produce the final image. As a consequence, the height of the image must be strictly superior than half the width. Make sure the width is even too.