Crossroads segmentation is a python tool that produces automatic segmentations of data from OpenStreetMap.
Project description
crossroads segmentation
Crossroads segmentation is a python tool that produces automatic segmentations of data from OpenStreetMap.
Installation
With pip, use the following command line to install crseg:
pip install crossroads-segmentation
Dependancies:
How it works
The computation uses both geometric and semantic information to identify and segment crossroads.
Identify streets and classify nodes
Build elementary intersections
Merge intersections by proximity
Merge intersections using multiple connectivity^
Identify branches
A paper presenting the algorithms implemented in this tool has been accepted at the AGILE 2022 conference:
- Favreau, J.-M. and Kalsron, J., What are intersections for pedestrian users?, in proceedings of the 25th AGILE International Conference on Geographic Information Science, Vilnius, Lithuania, 2022. (presentation).
This tool has been also be presented at SOTM-fr 2022.
Usage
If you installed crossroads-segmentation using pip, a console script is now available using get_crossroad_segmentation
. A slightly more complete version is available in the examples folder (PYTHONPATH=$PWD examples/get-crossroad-segmentation.py
). You will find a complete segmentation of the possible parameters using the --help
parameter.
This tool is using OSMnx to download OpenStreetMap data from the selected region. It uses a cache, stored in cache/
directory. If a region has already been asked, it will use the cached data and not download it again. You can of course delete the cache directory to download again the data.
The location of the region can be choosen using coordinates (--by-coordinates LAT LNG
) or using an predefined coordinate defined by a name in the example version (--by-name NAME
). A radius (-r VALUE
) with a default value of 150 meters can be adjusted to choose the size of the region to consider.
Several outputs are possible:
-
to display the segmentation with all the crossings in the region (
--display-segmentation
), or only focussing on the main crossroad (--display-main-crossroad
) closest to the input coordinate. This second display gives also the branches of the crossroad. -
to produce a text version of the selection (
--to-text
,--to-text-all
) in the standard output -
to produce a
json
file that contains all the detected crossroads (--to-json-all FILENAME
) or only the main one (--to-json FILENAME
). Branches are also contained in this output. -
3 parameters (C0, C1 and C2) to drive the creation and merge of the crossroads (see associated publication)
-
a maximum number of crossroads in a ring (
--max-cycle-elements NB
), with default value of 10 for the last step of the segmentation.
Several of these outputs (--to-json
, --to-json-all
, --display-main-crossroad
, --to-geopackage
) can be adjusted using the parameter --multiscale
to describe the small crossroad that has been merged to produce the large ones.
Non regression tests
A very basic non regression test is provided in test
directory. Usage:
- run first
./regenerate_references.sh
- run
./test.sh
each time you want to check for regressions
Visual evaluation
A separated project is available to evaluate segmentation quality. See crossroads-evaluation.
Examples
./get-crossroad-segmentation.py --by-name POC1 --display-main-crossroad --multiscale
./get-crossroad-segmentation.py --by-name obélisque --display-segmentation -r 1000
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