scipy.spatial.cKDTree.query_ball_point¶
- cKDTree.query_ball_point(self, x, r, p=2., eps=0)¶
- Find all points within distance r of point(s) x. - Parameters: - x : array_like, shape tuple + (self.m,) - The point or points to search for neighbors of. - r : positive float - The radius of points to return. - p : float, optional - Which Minkowski p-norm to use. Should be in the range [1, inf]. - eps : nonnegative 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 than r * (1 + eps). - n_jobs : int, optional - Number of jobs to schedule for parallel processing. If -1 is given all processors are used. Default: 1. - Returns: - results : list 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 - >>> from scipy import spatial >>> x, y = np.mgrid[0:4, 0:4] >>> points = zip(x.ravel(), y.ravel()) >>> tree = spatial.cKDTree(points) >>> tree.query_ball_point([2, 0], 1) [4, 8, 9, 12] 
