Spatial objects and computations based on NumPy arrays.
Project description
Introduction
This package provides spatial objects based on NumPy arrays, as well as computations using these objects. The package includes computations for 2D, 3D, and higher-dimensional space.
The following spatial objects are provided:
Point
Points
Vector
Line
Plane
Circle
Sphere
Triangle
Cylinder
Most of the computations fall into the following categories:
Measurement
Comparison
Projection
Intersection
Fitting
Transformation
All spatial objects are equipped with plotting methods based on matplotlib. Both 2D and 3D plotting are supported. Spatial computations can be easily visualized by plotting multiple objects at once.
Why this instead of scipy.spatial or sympy.geometry?
This package has little to no overlap with the functionality of scipy.spatial. It can be viewed as an object-oriented extension.
While similar spatial objects and computations exist in the sympy.geometry module, scikit-spatial is based on NumPy rather than symbolic math. The primary objects of scikit-spatial (Point, Points, and Vector) are actually subclasses of the NumPy ndarray. This gives them all the regular functionality of the ndarray, plus additional methods from this package.
>>> from skspatial.objects import Vector
>>> vector = Vector([2, 0, 0])
Behaviour inherited from NumPy:
>>> vector.size 3 >>> vector.mean().round(3) 0.667
Additional methods from scikit-spatial:
>>> vector.norm() 2.0 >>> vector.unit() Vector([1., 0., 0.])
Point and Vector are based on a 1D NumPy array, and Points is based on a 2D NumPy array, where each row represents a point in space. The Line and Plane objects have Point and Vector objects as attributes.
Note that most methods inherited from NumPy return a regular ndarray, instead of the spatial object class.
>>> vector.sum() array(2)
This is to avoid getting a spatial object with a forbidden shape, like a zero dimension Vector. Trying to convert this back to a Vector causes an exception.
>>> Vector(vector.sum()) Traceback (most recent call last): ... ValueError: The array must be 1D.
Because the computations of scikit-spatial are also based on NumPy, keyword arguments can be passed to NumPy functions. For example, a tolerance can be specified while testing for collinearity. The tol keyword is passed to numpy.linalg.matrix_rank.
>>> from skspatial.objects import Points
>>> points = Points([[1, 2, 3], [4, 5, 6], [7, 8, 8]])
>>> points.are_collinear() False >>> points.are_collinear(tol=1) True
Installation
The package can be installed with pip.
$ pip install scikit-spatial
It can also be installed with conda.
$ conda install scikit-spatial -c conda-forge
Example Usage
Measurement
Measure the cosine similarity between two vectors.
>>> from skspatial.objects import Vector
>>> Vector([1, 0]).cosine_similarity([1, 1]).round(3) 0.707
Comparison
Check if multiple points are collinear.
>>> from skspatial.objects import Points
>>> points = Points([[1, 2, 3, 4], [5, 6, 7, 8], [9, 10, 11, 12]])
>>> points.are_collinear() True
Projection
Project a point onto a line.
>>> from skspatial.objects import Line
>>> line = Line(point=[0, 0, 0], direction=[1, 1, 0])
>>> line.project_point([5, 6, 7]) Point([5.5, 5.5, 0. ])
Intersection
Find the intersection of two planes.
>>> from skspatial.objects import Plane
>>> plane_a = Plane(point=[0, 0, 0], normal=[0, 0, 1]) >>> plane_b = Plane(point=[5, 16, -94], normal=[1, 0, 0])
>>> plane_a.intersect_plane(plane_b) Line(point=Point([5., 0., 0.]), direction=Vector([0, 1, 0]))
An error is raised if the computation is undefined.
>>> plane_b = Plane(point=[0, 0, 1], normal=[0, 0, 1])
>>> plane_a.intersect_plane(plane_b) Traceback (most recent call last): ... ValueError: The planes must not be parallel.
Fitting
Find the plane of best fit for multiple points.
>>> points = [[0, 0, 0], [1, 0, 0], [0, 1, 0], [1, 1, 0]]
>>> Plane.best_fit(points) Plane(point=Point([0.5, 0.5, 0. ]), normal=Vector([0., 0., 1.]))
Transformation
Transform multiple points to 1D coordinates along a line.
>>> line = Line(point=[0, 0, 0], direction=[1, 2, 0]) >>> points = [[1, 2, 3], [4, 5, 6], [7, 8, 9]]
>>> line.transform_points(points).round(3) array([ 2.236, 6.261, 10.286])
Acknowledgment
This package was created with Cookiecutter and the audreyr/cookiecutter-pypackage project template.
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