3D Building Metrics. Elevating geometric analysis for urban morphology, solar potential, CFD etc to the next level 😉
Install the package from the repository:
cd urban-morphology-3d
pip install .
Then take your time and install pymesh.
A cool script that computes a lot metrics from 3D geometries (mostly intended for buildings).
The following metrics are computed:
Type | Metrics |
---|---|
Geometric Properties | Number of vertices, Number of surfaces, Number of vertices by semantic type (i.e. ground, roof, wall), Number of surfaces by semantic type (i.e. ground, roof, wall), Min/Max/Range/Mean/Median/Std/Mode height |
Derived Properties | Footprint perimeter, Volume, Volume of convex hull, Volume of Object-Oriented Bounding Box, Volume of Axis-Oriented Bounding Box, Volume of voxelised building, Length and width of the Object-Oriented Bounding Box, Surface area, Surface area by semantic surface, Horizontal elongation, Min/Max vertical elongation, Form factor |
Spatial distribution | Shared walls, Nearest neighbour |
Shape indices | Circularity/Hemisphericality*, Convexity 2D/3D*, Fractality 2D/3D*, Rectangularity/Cuboidness*, Squareness/Cubeness*, Cohesion 2D/3D*, Proximity 2D/3D+, Exchange 2D/3D+, Spin 2D/3D+, Perimeter/Circumference*, Depth 2D/3D+, Girth 2D/3D+, Dispersion 2D/3Dx, Range 2D/3D*, Equivalent Rectangular/Cuboid*, Roughnessx |
- * formula-based index, size-independent by definition
- + index based on interior grid points (discretised), normalised
- x index based on surface grid points (discretised), normalised
Yeah:
- It works with only
MultiSurface
andSolid
(the latter, only for the first shell) - It only parses the first geometry
- Expects semantic surfaces
Running it, saving it, and including a val3dity report:
python cityStats.py [file_path] -o [output.csv] [-v val3dity_report.json]
Default is single-threaded, define the number of threads with:
python cityStats.py [file_path] -j [number]
Visualising a specific building, which can help with troubleshooting:
python cityStats.py [file_path] -p -f [unique_id]
Running multiple files in a folder and checking with val3dity (make sure you have val3dity installed):
for i in *.json; do val3dity $i --report "${i%.json}_v3.json"; python cityStats.py $i -o "${i%.json}.csv" -v "${i%.json}_v3.json"; done
Tuurlijk! Just:
python cityPlot.py [file_path]
-
Download or
git clone
this repository. -
Install all dependencies:
pip install -r requirements.txt
. -
Download a tile from 3D BAG:
wget --header='Accept-Encoding: gzip' https://data.3dbag.nl/cityjson/v210908_fd2cee53/3dbag_v210908_fd2cee53_5910.json
-
Run the stats on the data:
python cityStats.py 3dbag_v210908_fd2cee53_5910.json -o 5910.csv
-
The resutling file
5910.csv
contains all metrics computed for this tile.
You may also run this with a val3dity report. You may download the val3dity report as a json file from the aforementioned website. Assuming the report's filename is report.json
you can run:
python cityStats.py 3dbag_v210908_fd2cee53_5910.json -v report.json -o 5910.csv
Then the result will contain more info related to the validation of geometries.
Anna Labetski, Stelios Vitalis, Filip Biljecki, Ken Arroyo Ohori & Jantien Stoter (2022) 3D building metrics for urban morphology, International Journal of Geographical Information Science, DOI: 10.1080/13658816.2022.2103818
@article{Labetski2022,
Author = {Anna Labetski and Stelios Vitalis and Filip Biljecki and Ken {Arroyo Ohori} and Jantien Stoter},
Title = {{3D} building metrics for urban morphology},
Journal = {International Journal of Geographical Information Science},
Volume = {0},
Number = {0},
Pages = {1-32},
Year = {2022},
Publisher = {Taylor & Francis},
Doi = {10.1080/13658816.2022.2103818}