This is the main repository of AP Latam project.
For more information on the website frontend, see the repository at https://github.com/dymaxionlabs/ap-latam-web.
- Python 3+
- GDAL
- Proj4
- libspatialindex
- Dependencies for TensorFlow with GPU support
If you have Docker installed on your machine, with NVIDIA CUDA installed and configured, you can simply pull our image and run the scripts for training and detection.
Otherwise, follow the steps in this
tutorial
to install Docker, CUDA and nvidia-docker
. This has been tested on an Ubuntu
16.04 LTS instance on Google Cloud Platform.
For all scripts you will need to mount a data volume so that the scripts can read the input rasters and vector files, and write the resulting vector file.
It is recommended that you first set an environment variable that points to the data directory in your host machine, like this:
export APLATAM_DATA=$HOME/aplatam-data
Then, to use any of the scripts, you would have to run them using
nvidia-docker
and mounting a volume to $APLATAM_DATA
like this:
nvidia-docker run -ti -v $APLATAM_DATA:/data dymaxionlabs/ap-latam SCRIPT_TO_RUN [ARGS...]
where SCRIPT_TO_RUN
is either ap_train
or ap_detect
and [ARGS...]
the
command line arguments of the specified script. You can run with --help
to
see all available options on each script.
For example, suppose you have the following files inside the $APLATAM_DATA
directory:
- Training rasters on
images/
- A settlements vector file
settlements.geojson
To prepare a dataset and train a model you would run:
nvidia-docker run -ti -v $APLATAM_DATA:/data dymaxionlabs/ap-latam \
ap_train /data/images /data/settlements.geojson /data/dataset
When using [nvidia-]docker run
for the first time, it will pull the image
automatically for you, so it is not neccessary to do [nvidia-]docker pull
first.
You can also use run_with_docker.sh
to do the same:
export APLATAM_DATA=$HOME/data/
./run_with_docker.sh ap_train /data/images /data/settlements.geojson /data/dataset
...
First you will need to install the following packages. On Debian-based distros run:
sudo apt install libproj-dev gdal-bin build-essential libgdal-dev libspatialindex-dev python3-venv virtualenv
Clone the repository and run python setup.py install
to install the package
with its dependencies. Add --extras gpu
to install GPU dependencies
(TensorFlow for GPUs).
Run make
to run tests and make cov
to build a code coverage report. You can
run make
to do both.
Please report any bugs and enhancement ideas using the GitHub issue tracker:
https://github.com/dymaxionlabs/ap-latam/issues
Feel free to also ask questions on our Gitter channel, or by email.
Any help in testing, development, documentation and other tasks is highly appreciated and useful to the project.
For more details, see the file CONTRIBUTING.md.
Source code is released under a BSD-2 license. Please refer to LICENSE.md for more information.