зеркало из https://github.com/microsoft/landcover.git
3db2c2f403 | ||
---|---|---|
data | ||
tests | ||
training | ||
utils | ||
web_tool | ||
.gitignore | ||
.pylintrc | ||
README.md | ||
TODO.md | ||
azure-pipelines.yml | ||
environment.yml | ||
environment_precise.yml | ||
server.py | ||
worker.py |
README.md
Land cover mapping project
This repository holds both the "frontend" web-application and "backend" web API server that make up our "Land Cover Mapping" tool. An instance of this tool may be live here.
Project setup instructions
- Open a terminal on the machine
- Install conda (note: if you are using a DSVM on Azure then you can skip this step as conda is preinstalled!)
# Install Anaconda
cd ~
wget https://repo.anaconda.com/archive/Anaconda3-2019.07-Linux-x86_64.sh
bash Anaconda3-2019.07-Linux-x86_64.sh # select "yes" for setting up conda init
rm Anaconda3-2019.07-Linux-x86_64.sh
# logout and log back in
exit
- Install NVIDIA drivers if you intend on using GPUs; note this might require a reboot (note: again, if you are using a DSVM on a Azure GPU VM then this is also handled)
- Setup the repository and install the demo data
# Get the project and demo project data
git clone https://github.com/microsoft/landcover.git
wget -O landcover.zip "https://mslandcoverstorageeast.blob.core.windows.net/web-tool-data/landcover.zip"
unzip -q landcover.zip
rm landcover.zip
# unzip the tileset that comes with the demo data
cd landcover/data/basemaps/
unzip -q hcmc_sentinel_tiles.zip
unzip -q m_3807537_ne_18_1_20170611_tiles.zip
rm *.zip
cd ../../../
# install the conda environment
# Note: if using a DSVM on Azure, as of 7/6/2020 you need to first run `sudo chown -R $USER /anaconda/`
cd landcover
conda env create --file environment.yml
cd ..
Configure the web-tool
A few more steps are needed to configure the interactive web-tool.
- Create and edit
web_tool/endpoints.mine.js
. Replace "localhost" with the address of your machine (or leave it alone it you are running locally), and choose the port you will use (defaults to 8080). Note: make sure this port is open to your machine if you are using a remote sever (e.g. with a DSVM on Azure, use the Networking tab to open port 8080).
cp landcover/web_tool/endpoints.js landcover/web_tool/endpoints.mine.js
nano landcover/web_tool/endpoints.mine.js
- Edit
self._WORKERS
of the SessionHandler class in SessionHandler.py to include the GPU resources you want to use on your machine. By default this is set to use GPU IDs 0 through 4.
nano landcover/web_tool/SessionHandler.py
Running an instance of the web-tool
Whether you setup the server in an Azure VM or locally, the following steps should apply to start an instance of the server:
- Open a terminal on the machine and
cd
to the root directory (wherever/you/cloned/landcover/
) python server.py local
- This will start an HTTP server on :8080 that both serves the "frontend" web application and responds to API calls from the "frontend", allowing the web-app to interface with our CNN models (i.e. the "backend").
- The tool comes preloaded with a dataset (defined in
web_tool/datasets.json
) and two models (defined inweb_tool/models.json
).
- You should now be able to visit
http://<your machine's address>:8080/
and see the "frontend" interface.