Metadata-Version: 2.1
Name: fractionalcover3
Version: 1.0.11
Summary: Python package to produce land cover fractions from satellite imagery.
Home-page: https://gitlab.com/jrsrp/themes/cover/fractionalcover3
Author: Remote Sensing Centre, Department of Environment and Science, Queensland
Author-email: robert.denham@des.qld.gov.au
License: mit
Project-URL: Documentation, https://jrsrp.gitlab.io/themes/cover/fractionalcover/
Platform: linux
Classifier: Development Status :: 4 - Beta
Classifier: Programming Language :: Python
Requires-Python: >=3.7
Description-Content-Type: text/markdown; charset=UTF-8; variant=GFM
Provides-Extra: rsc
Provides-Extra: testing
License-File: LICENSE.txt
License-File: AUTHORS.rst

# Fractionalcover version 3

Vegetation fractional cover package.


## Description

Vegetation fractional cover represents the exposed proportion of green, non-green, and bare cover within each pixel.
Landsat-scale ground cover information is important for soil erosion and nutrient flux estimates into the stream
network, as well as assessing the impact of human activities.

The fractional cover v3.0 model is a Multi Layer Perceptron (neural network) model architecture that uses surface 
reflectance to estimate the three cover fractions of bare ground, photosynthetic vegetation (PV) and non-photosynthetic 
vegetation (NPV). The MLP model was trained with Tensorflow using Landsat TM, ETM+ and OLI surface reflectance and 
a collection of 4000 field observations of overstorey and ground cover. The field observations covered a wide 
variety of vegetation, soil and climate types across Australia, collected between 1997 and 2018 following the 
procedure outlined in:

Muir, J., Schmidt, M., Tindall, D., Trevithick, R., Scarth, P. and Stewart, J.B., 2011. _Field measurement of 
fractional ground cover: a technical handbook supporting ground cover monitoring for Australia_. 
Australian Bureau of Agricultural and Resource Economics and Sciences (ABARES): Canberra, Australia.



## Installation:

This package requires [numpy](https://numpy.org/) and [tflite-runtime](https://www.tensorflow.org/lite/guide/python)

If those packages are available, then installation should be straightforward.
Here is an example:

```
python -m pip install fractionalcover3
```

The package comes with two scripts to produce fractional cover images on RSC standard
landsat surface reflectance and Sentinel2 Surface Reflectance. To use these scripts, you
will require some additional dependencies, which you can install if you have access
to them using the `rsc` option. For example:

```
# install numpy, then gdal first
python -m pip install numpy
python -m pip install gdal==$(gdal-config --version)
python -m pip install fractionalcover3[rsc]
```

Not all of the dependencies are on PyPI, so you may need to manually install 
these from source first. The Raster Processing pacage `rios`, is
available from github (check their
[documentation](http://www.rioshome.org/en/latest/) ), but the `rsc` package
is internal to the [JRSRP](https://www.jrsrp.org.au/). Contact the authors for
more information on access.

While the scripts won't function without these packages, they are included in
case they are useful templates for writing similar scripts to operate on
complete images.


## Basic Usage

The main function in the package is `unmix_fractional_cover`, which takes
a numpy 3d array for surface reflectance (scaled between 0 and 1), and
produces a 3d array of fractional cover. The output has 3 bands, one for
each bare, green and non-green components.

The unmixining uses a tensorflow model. This is supplied as a
`tflite.Interpreter` object. There are three models provided with the package,
each at varying levels of complexity. These can be selected by number, with 1
the simplest and 3 the most complex.

The simplest example might look like:

```python
from fractionalcover3 import unmix_fractional_cover
from fractionalcover3 import data
import numpy as np
inref = np.array([562, 825, 1088, 2056, 2951, 2187]) * 0.0001
inref.shape = (6, 1, 1)

# use the default model provided
fractions = unmix_fractional_cover(inref,
                                       fc_model=data.get_model()
                                  )
```


## How to Cite this Package

You can cite this package using the DOI:

```
@misc{scarthp2022,
  title={JRSRP} {F}ractional {C}over 3.0,
  author={Peter Scarth, Robert Denham, Fiona Watson},
  year={2022},
  month={08},
  howpublished={\url{https://gitlab.com/jrsrp/themes/cover/fractionalcover3}},
  doi={10.5281/zenodo.7008343}
}
```




