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Segment (georeferenced) raster data in an interactive fashion. Retrain models in seconds. Only small amounts of labeled data necessary because of our use of pretrained base models as feature extractors.

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Segment (georeferenced) raster data in an interactive fashion. Retrain models in seconds. Only small amounts of labeled data necessary because of our use of pretrained base models as feature extractors. Segmentmytif can be used as a standalone commandline tool or as the backend for the QGIS plugin called DroneML.

The project setup is documented in project_setup.md.

Typical usage

Let's say you've got the image on the left, along with the labels (superimposed on the image) on the right.

image image

You run the commandline tool as follows, selecting both input image and labels, the path where the output should be, and the type of features to use.

python main.py --input image.tif --labels labels.tif --predictions output.tif

The resulting output looks like:

image

To test this with our testdata, run:

python src/segmentmytif/main.py --input tests/test_data/test_image.tif -l tests/test_data/test_image_labels.tif -p output.tif

Installation

There are 2 ways to install Segmentmytif. Either run:

pip install segmentmytif

Or run:

git clone git@github.com:DroneML/segmentmytif.git
cd segmentmytif
python -m pip install .

Logging

The application writes logs to the 'logs' dir, which will be created if it doesn't exist yet. Messages printed to the screen (stdout) are stored in info.log for later reference. More detailed information, such as input data shapes and value distributions, are written to debug.log.

Train a feature extraction model

To train a feature extraction model run the script "train_model.py" in this repo:

python ./src/segmentmytif/utils/train_model.py -r ../monochrome_flair_1_toy_dataset_flat/ --train_set_limit 10

This assumes a 'flat', grayscale, version of the FLAIR1 dataset is present at the selected root location.

root
- train
    - input
        - IMG_061946_0.tif
        - IMG_061946_1.tif
        - ...
    - labels
        - MSK_061946_0.tif
        - ...    

Use the script 'monochromize.py' to create greyscale (single band) tifs for every multiband tif in a source folder:

python ./src/segmentmytif/utils/monochromize.py -i ../flair_1_toy_dataset/ -o ../monochrome_flair_1_toy_dataset/

Credits

This package was created with Copier and the NLeSC/python-template.

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