Simplification#
Simplify a LineString using the Ramer–Douglas–Peucker or Visvalingam-Whyatt algorithms
Installation#
uv add simplification OR
pip install simplification OR
conda install conda-forge::simplification
Installing for local development#
- Ensure you have a copy of
librdpandheader.hfrom https://github.com/urschrei/rdp/releases, and it's in thesrc/simplificationsubdir - run
uv sync --dev - run
pytest . - If you make changes, you must rebuild the extension:
uv sync --reinstall
Building SDist and Wheels#
- Ensure that
librdpand header are present, as above - Run
uv build --sdist --wheel
Supported Python Versions#
Simplification supports all currently supported Python versions.
Supported Platforms#
- Linux (
manylinux-compatible) x86_64 and aarch64 - macOS Darwin x86_64 and arm64
- Windows 64-bit
Usage#
from simplification.cutil import (
simplify_coords,
simplify_coords_idx,
simplify_coords_vw,
simplify_coords_vw_idx,
simplify_coords_vwp,
)
# Using Ramer–Douglas–Peucker
coords = [
[0.0, 0.0],
[5.0, 4.0],
[11.0, 5.5],
[17.3, 3.2],
[27.8, 0.1]
]
# For RDP, Try an epsilon of 1.0 to start with. Other sensible values include 0.01, 0.001
simplified = simplify_coords(coords, 1.0)
# simplified is [[0.0, 0.0], [5.0, 4.0], [11.0, 5.5], [27.8, 0.1]]
# Using Visvalingam-Whyatt
# You can also pass numpy arrays, in which case you'll get numpy arrays back
import numpy as np
coords_vw = np.array([
[5.0, 2.0],
[3.0, 8.0],
[6.0, 20.0],
[7.0, 25.0],
[10.0, 10.0]
])
simplified_vw = simplify_coords_vw(coords_vw, 30.0)
# simplified_vw is [[5.0, 2.0], [7.0, 25.0], [10.0, 10.0]]
Passing empty and/or 1-element lists will return them unaltered.
But I only want the simplified Indices#
simplification now has:
cutil.simplify_coords_idxcutil.simplify_coords_vw_idx
The values returned by these functions are the retained indices. In order to use them as e.g. a masked array in Numpy, something like the following will work:
import numpy as np
from simplification.cutil import simplify_coords_idx
# assume an array of coordinates: orig
simplified = simplify_coords_idx(orig, 1.0)
# build new geometry using only retained coordinates
orig_simplified = orig[simplified]
But I need to ensure that the resulting geometries are valid#
You can use the topology-preserving variant of VW for this: simplify_coords_vwp. It's slower, but has a far greater likelihood of producing a valid geometry.
But I Want to Simplify Polylines#
No problem; Decode them to LineStrings first.
# pip install pypolyline before you do this
from pypolyline.cutil import decode_polyline
# an iterable of Google-encoded Polylines, so precision is 5. For OSRM &c., it's 6
decoded = (decode_polyline(line, 5) for line in polylines)
simplified = [simplify_coords(line, 1.0) for line in decoded]
How it Works#
FFI and a Rust binary
Is It Fast#
I should think so.
What does that mean#
Using numpy arrays for input and output, the library can be reasonably expected to process around 2500 1000-point LineStrings per second on a Core i7 or equivalent, for a 98%+ reduction in size.
A larger LineString, containing 200k+ points can be reduced to around 3k points (98.5%+) in around 50ms using RDP.
This is based on a test harness available here.
Disclaimer#
All benchmarks are subjective, and pathological input will greatly increase processing time. Error-checking is non-existent at this point.
License#
Citing Simplification#
If Simplification has been significant in your research, and you would like to acknowledge the project in your academic publication, we suggest citing it as follows (example in APA style, 7th edition):
Hügel, S. (2021). Simplification (Version X.Y.Z) [Computer software]. https://doi.org/10.5281/zenodo.5774852
In Bibtex format:
@software{Hugel_Simplification_2021,
author = {Hügel, Stephan},
doi = {10.5281/zenodo.5774852},
license = {MIT},
month = {12},
title = {{Simplification}},
url = {https://github.com/urschrei/simplification},
version = {X.Y.Z},
year = {2021}
}