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Smoothing Shapely geometries using CatMull-Rom spline

Project description

CatSmoothing

CatSmoothing: Smoothing Shapely Geometries with Catmull-Rom Splines

PyPI Conda License: MIT Binder

codecov CI Documentation Status

Overview

CatSmoothing smooths Shapely geometries, LineString and (Multi)Polygon, using the Catmull-Rom spline algorithm. The implementation is based on the Splines library, but offers performance improvements and additional features.

You can try CatSmoothing directly in your browser by clicking the Binder badge above.

Key Features

  • Creating splines from 2D/3D vertices of a line that allows computing n-th derivatives
  • Smoothing geometries with Centripetal Catmull-Rom splines with uniform spacing (spacing is determined iteratively based on the arc length of the input geometry)
  • Computing tangent vectors at each vertex of a line
  • Optional Gaussian filtering to reduce noise in input geometries before smoothing (requires scipy to be installed)
  • Automatically using opt-einsum for efficient computation of the spline coefficients, if it is installed

Installation

Install CatSmoothing via pip or micromamba:

Using pip:

pip install catsmoothing

Using micromamba (or conda/mamba):

micromamba install -c conda-forge catsmoothing

Quick Start

CatSmoothing provide one class called CatmullRom that is general purpose, Catmull-Rom spline interpolation class. You can tweak the alpha parameter of the class to interpolate with different versions of the Catmull-Rom spline from 2D/3D vertices of a line and compute n-th derivatives. For smoothing geometries, CatSmoothing uses the centripetal Catmull-Rom spline algorithm, i.e., alpha=0.5. There are two functions that can be used for smoothing geometries: smooth_line and smooth_polygon.

Basic Usage

For fitting a Catmull-Rom spline to a line, we can use the following code:

from catsmoothing import CatmullRom


verts = [(0, 0), (0, 0.5), (1.5, 1.5), (1.6, 1.5), (3, 0.2), (3, 0)]
n_pts = 15
for alpha in (0, 0.5, 1):
    s = CatmullRom(verts, alpha=alpha, bc_types="closed")
    dots = int((s.grid[-1] - s.grid[0]) * n_pts) + 1
    distances = s.grid[0] + np.arange(dots) / n_pts
    smoothed[alpha] = s.evaluate(distances)

Catmull-Rom Splines

For smoothing a geometry, we can use the following code:

from shapely import Polygon
import catsmoothing as cs


poly = Polygon(verts)
ploy_smoothed = cs.smooth_polygon(poly, n_pts=50)

Polygon Smoothing

For smoothing a noisy line, we can use the following code:

import numpy as np
from shapely import LineString
import catsmoothing as cs


rng = np.random.default_rng(123)
x = np.linspace(-3, 2.5, 50)
y = np.exp(-(x**2)) + 0.1 * rng.standard_normal(50)
line = LineString(np.c_[x, y])
line_smoothed = cs.smooth_linestring(line, n_pts=30, gaussian_sigma=2)

Line Smoothing

We can then compute the tangent angles in radians at each vertex of the smoothed line:

vertices = shapely.get_coordinates(line_smoothed)
tangents = cs.compute_tangents(vertices)

Tangent Angles

For more examples, visit the documentation.

Contributing

We welcome contributions! For guidelines, please refer to the CONTRIBUTING.md and CODE_OF_CONDUCT.md.

License

CatSmoothing is licensed under the MIT License. See the LICENSE file for details.

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