scipy.spatial.cKDTree.query_ball_point#
- cKDTree.query_ball_point(self, x, r, p=2., eps=0, workers=1, return_sorted=None, return_length=False)#
Find all points within distance r of point(s) x.
- Parameters:
- xarray_like, shape tuple + (self.m,)
The point or points to search for neighbors of.
- rarray_like, float
The radius of points to return, shall broadcast to the length of x.
- pfloat, optional
Which Minkowski p-norm to use. Should be in the range [1, inf]. A finite large p may cause a ValueError if overflow can occur.
- epsnonnegative float, optional
Approximate search. Branches of the tree are not explored if their nearest points are further than
r / (1 + eps)
, and branches are added in bulk if their furthest points are nearer thanr * (1 + eps)
.- workersint, optional
Number of jobs to schedule for parallel processing. If -1 is given all processors are used. Default: 1.
Changed in version 1.9.0: The “n_jobs” argument was renamed “workers”. The old name “n_jobs” was deprecated in SciPy 1.6.0 and was removed in SciPy 1.9.0.
- return_sortedbool, optional
Sorts returned indices if True and does not sort them if False. If None, does not sort single point queries, but does sort multi-point queries which was the behavior before this option was added.
Added in version 1.2.0.
- return_length: bool, optional
Return the number of points inside the radius instead of a list of the indices. .. versionadded:: 1.3.0
- Returns:
- resultslist or array of lists
If x is a single point, returns a list of the indices of the neighbors of x. If x is an array of points, returns an object array of shape tuple containing lists of neighbors.
Notes
If you have many points whose neighbors you want to find, you may save substantial amounts of time by putting them in a cKDTree and using query_ball_tree.
Examples
>>> import numpy as np >>> from scipy import spatial >>> x, y = np.mgrid[0:4, 0:4] >>> points = np.c_[x.ravel(), y.ravel()] >>> tree = spatial.cKDTree(points) >>> tree.query_ball_point([2, 0], 1) [4, 8, 9, 12]
Query multiple points and plot the results:
>>> import matplotlib.pyplot as plt >>> points = np.asarray(points) >>> plt.plot(points[:,0], points[:,1], '.') >>> for results in tree.query_ball_point(([2, 0], [3, 3]), 1): ... nearby_points = points[results] ... plt.plot(nearby_points[:,0], nearby_points[:,1], 'o') >>> plt.margins(0.1, 0.1) >>> plt.show()