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A package for generating hydrologically conditioned DEMs and roughness maps from LiDAR and other infrastructure data. Check the wiki for install and usage instructions, and documentation at https://rosepearson.github.io/GeoFabrics/

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GeoFabrics

Linux

The geofabrics package includes routines and classes for combining point (i.e. LiDAR), vector (i.e. catchment of interest, infrastructure), and raster (i.e. reference DEM) to generate a hydrologically conditioned raster.

A peer-reviewed journal article of the package and methodogy can be found at: https://www.sciencedirect.com/science/article/pii/S1364815223002281

Installation

geofabrics is avaliable on conda-forge and PyPI. Conda is recommended due to difficulties installing geopandas (a dependency) with pip on Windows. See the Wiki Install Instructions for more information.

General workflow

DEM_generation_workflow

Documentation

Wiki

For detailed instructions on installation, usage, and testing please check out the repo wiki.

API documentation

For auto-generated API documentation, checkout the repo pages.

Contributions

Please see our Issue Tracker for details on coming features and additions to the software.

There is no current expectations of contributions to this project. We accept input in code reviews now. If you would like to be involved in the project, please contact the maintainer.

License

GNU GPL

Contacts

Maintainer: Rose Pearson @rosepearson rose.pearson@niwa.co.nz

Contributors

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A package for generating hydrologically conditioned DEMs and roughness maps from LiDAR and other infrastructure data. Check the wiki for install and usage instructions, and documentation at https://rosepearson.github.io/GeoFabrics/

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