| """ |
| Convenience interface to N-D interpolation |
| |
| .. versionadded:: 0.9 |
| |
| """ |
| import numpy as np |
| from ._interpnd import (LinearNDInterpolator, NDInterpolatorBase, |
| CloughTocher2DInterpolator, _ndim_coords_from_arrays) |
| from scipy.spatial import cKDTree |
|
|
| __all__ = ['griddata', 'NearestNDInterpolator', 'LinearNDInterpolator', |
| 'CloughTocher2DInterpolator'] |
|
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| |
| |
| |
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|
|
| class NearestNDInterpolator(NDInterpolatorBase): |
| """NearestNDInterpolator(x, y). |
| |
| Nearest-neighbor interpolator in N > 1 dimensions. |
| |
| .. versionadded:: 0.9 |
| |
| Methods |
| ------- |
| __call__ |
| |
| Parameters |
| ---------- |
| x : (npoints, ndims) 2-D ndarray of floats |
| Data point coordinates. |
| y : (npoints, ) 1-D ndarray of float or complex |
| Data values. |
| rescale : boolean, optional |
| Rescale points to unit cube before performing interpolation. |
| This is useful if some of the input dimensions have |
| incommensurable units and differ by many orders of magnitude. |
| |
| .. versionadded:: 0.14.0 |
| tree_options : dict, optional |
| Options passed to the underlying ``cKDTree``. |
| |
| .. versionadded:: 0.17.0 |
| |
| See Also |
| -------- |
| griddata : |
| Interpolate unstructured D-D data. |
| LinearNDInterpolator : |
| Piecewise linear interpolator in N dimensions. |
| CloughTocher2DInterpolator : |
| Piecewise cubic, C1 smooth, curvature-minimizing interpolator in 2D. |
| interpn : Interpolation on a regular grid or rectilinear grid. |
| RegularGridInterpolator : Interpolator on a regular or rectilinear grid |
| in arbitrary dimensions (`interpn` wraps this |
| class). |
| |
| Notes |
| ----- |
| Uses ``scipy.spatial.cKDTree`` |
| |
| .. note:: For data on a regular grid use `interpn` instead. |
| |
| Examples |
| -------- |
| We can interpolate values on a 2D plane: |
| |
| >>> from scipy.interpolate import NearestNDInterpolator |
| >>> import numpy as np |
| >>> import matplotlib.pyplot as plt |
| >>> rng = np.random.default_rng() |
| >>> x = rng.random(10) - 0.5 |
| >>> y = rng.random(10) - 0.5 |
| >>> z = np.hypot(x, y) |
| >>> X = np.linspace(min(x), max(x)) |
| >>> Y = np.linspace(min(y), max(y)) |
| >>> X, Y = np.meshgrid(X, Y) # 2D grid for interpolation |
| >>> interp = NearestNDInterpolator(list(zip(x, y)), z) |
| >>> Z = interp(X, Y) |
| >>> plt.pcolormesh(X, Y, Z, shading='auto') |
| >>> plt.plot(x, y, "ok", label="input point") |
| >>> plt.legend() |
| >>> plt.colorbar() |
| >>> plt.axis("equal") |
| >>> plt.show() |
| |
| """ |
|
|
| def __init__(self, x, y, rescale=False, tree_options=None): |
| NDInterpolatorBase.__init__(self, x, y, rescale=rescale, |
| need_contiguous=False, |
| need_values=False) |
| if tree_options is None: |
| tree_options = dict() |
| self.tree = cKDTree(self.points, **tree_options) |
| self.values = np.asarray(y) |
|
|
| def __call__(self, *args, **query_options): |
| """ |
| Evaluate interpolator at given points. |
| |
| Parameters |
| ---------- |
| x1, x2, ... xn : array-like of float |
| Points where to interpolate data at. |
| x1, x2, ... xn can be array-like of float with broadcastable shape. |
| or x1 can be array-like of float with shape ``(..., ndim)`` |
| **query_options |
| This allows ``eps``, ``p``, ``distance_upper_bound``, and ``workers`` |
| being passed to the cKDTree's query function to be explicitly set. |
| See `scipy.spatial.cKDTree.query` for an overview of the different options. |
| |
| .. versionadded:: 1.12.0 |
| |
| """ |
| |
| |
| |
| xi = _ndim_coords_from_arrays(args, ndim=self.points.shape[1]) |
| xi = self._check_call_shape(xi) |
| xi = self._scale_x(xi) |
|
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| |
| xi_flat = xi.reshape(-1, xi.shape[-1]) |
| original_shape = xi.shape |
| flattened_shape = xi_flat.shape |
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| |
| |
| |
| dist, i = self.tree.query(xi_flat, **query_options) |
| valid_mask = np.isfinite(dist) |
|
|
| |
| if self.values.ndim > 1: |
| interp_shape = flattened_shape[:-1] + self.values.shape[1:] |
| else: |
| interp_shape = flattened_shape[:-1] |
|
|
| if np.issubdtype(self.values.dtype, np.complexfloating): |
| interp_values = np.full(interp_shape, np.nan, dtype=self.values.dtype) |
| else: |
| interp_values = np.full(interp_shape, np.nan) |
|
|
| interp_values[valid_mask] = self.values[i[valid_mask], ...] |
|
|
| if self.values.ndim > 1: |
| new_shape = original_shape[:-1] + self.values.shape[1:] |
| else: |
| new_shape = original_shape[:-1] |
| interp_values = interp_values.reshape(new_shape) |
|
|
| return interp_values |
|
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| |
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|
|
| def griddata(points, values, xi, method='linear', fill_value=np.nan, |
| rescale=False): |
| """ |
| Interpolate unstructured D-D data. |
| |
| Parameters |
| ---------- |
| points : 2-D ndarray of floats with shape (n, D), or length D tuple of 1-D ndarrays with shape (n,). |
| Data point coordinates. |
| values : ndarray of float or complex, shape (n,) |
| Data values. |
| xi : 2-D ndarray of floats with shape (m, D), or length D tuple of ndarrays broadcastable to the same shape. |
| Points at which to interpolate data. |
| method : {'linear', 'nearest', 'cubic'}, optional |
| Method of interpolation. One of |
| |
| ``nearest`` |
| return the value at the data point closest to |
| the point of interpolation. See `NearestNDInterpolator` for |
| more details. |
| |
| ``linear`` |
| tessellate the input point set to N-D |
| simplices, and interpolate linearly on each simplex. See |
| `LinearNDInterpolator` for more details. |
| |
| ``cubic`` (1-D) |
| return the value determined from a cubic |
| spline. |
| |
| ``cubic`` (2-D) |
| return the value determined from a |
| piecewise cubic, continuously differentiable (C1), and |
| approximately curvature-minimizing polynomial surface. See |
| `CloughTocher2DInterpolator` for more details. |
| fill_value : float, optional |
| Value used to fill in for requested points outside of the |
| convex hull of the input points. If not provided, then the |
| default is ``nan``. This option has no effect for the |
| 'nearest' method. |
| rescale : bool, optional |
| Rescale points to unit cube before performing interpolation. |
| This is useful if some of the input dimensions have |
| incommensurable units and differ by many orders of magnitude. |
| |
| .. versionadded:: 0.14.0 |
| |
| Returns |
| ------- |
| ndarray |
| Array of interpolated values. |
| |
| See Also |
| -------- |
| LinearNDInterpolator : |
| Piecewise linear interpolator in N dimensions. |
| NearestNDInterpolator : |
| Nearest-neighbor interpolator in N dimensions. |
| CloughTocher2DInterpolator : |
| Piecewise cubic, C1 smooth, curvature-minimizing interpolator in 2D. |
| interpn : Interpolation on a regular grid or rectilinear grid. |
| RegularGridInterpolator : Interpolator on a regular or rectilinear grid |
| in arbitrary dimensions (`interpn` wraps this |
| class). |
| |
| Notes |
| ----- |
| |
| .. versionadded:: 0.9 |
| |
| .. note:: For data on a regular grid use `interpn` instead. |
| |
| Examples |
| -------- |
| |
| Suppose we want to interpolate the 2-D function |
| |
| >>> import numpy as np |
| >>> def func(x, y): |
| ... return x*(1-x)*np.cos(4*np.pi*x) * np.sin(4*np.pi*y**2)**2 |
| |
| on a grid in [0, 1]x[0, 1] |
| |
| >>> grid_x, grid_y = np.mgrid[0:1:100j, 0:1:200j] |
| |
| but we only know its values at 1000 data points: |
| |
| >>> rng = np.random.default_rng() |
| >>> points = rng.random((1000, 2)) |
| >>> values = func(points[:,0], points[:,1]) |
| |
| This can be done with `griddata` -- below we try out all of the |
| interpolation methods: |
| |
| >>> from scipy.interpolate import griddata |
| >>> grid_z0 = griddata(points, values, (grid_x, grid_y), method='nearest') |
| >>> grid_z1 = griddata(points, values, (grid_x, grid_y), method='linear') |
| >>> grid_z2 = griddata(points, values, (grid_x, grid_y), method='cubic') |
| |
| One can see that the exact result is reproduced by all of the |
| methods to some degree, but for this smooth function the piecewise |
| cubic interpolant gives the best results: |
| |
| >>> import matplotlib.pyplot as plt |
| >>> plt.subplot(221) |
| >>> plt.imshow(func(grid_x, grid_y).T, extent=(0,1,0,1), origin='lower') |
| >>> plt.plot(points[:,0], points[:,1], 'k.', ms=1) |
| >>> plt.title('Original') |
| >>> plt.subplot(222) |
| >>> plt.imshow(grid_z0.T, extent=(0,1,0,1), origin='lower') |
| >>> plt.title('Nearest') |
| >>> plt.subplot(223) |
| >>> plt.imshow(grid_z1.T, extent=(0,1,0,1), origin='lower') |
| >>> plt.title('Linear') |
| >>> plt.subplot(224) |
| >>> plt.imshow(grid_z2.T, extent=(0,1,0,1), origin='lower') |
| >>> plt.title('Cubic') |
| >>> plt.gcf().set_size_inches(6, 6) |
| >>> plt.show() |
| |
| """ |
|
|
| points = _ndim_coords_from_arrays(points) |
|
|
| if points.ndim < 2: |
| ndim = points.ndim |
| else: |
| ndim = points.shape[-1] |
|
|
| if ndim == 1 and method in ('nearest', 'linear', 'cubic'): |
| from ._interpolate import interp1d |
| points = points.ravel() |
| if isinstance(xi, tuple): |
| if len(xi) != 1: |
| raise ValueError("invalid number of dimensions in xi") |
| xi, = xi |
| |
| idx = np.argsort(points) |
| points = points[idx] |
| values = values[idx] |
| if method == 'nearest': |
| fill_value = 'extrapolate' |
| ip = interp1d(points, values, kind=method, axis=0, bounds_error=False, |
| fill_value=fill_value) |
| return ip(xi) |
| elif method == 'nearest': |
| ip = NearestNDInterpolator(points, values, rescale=rescale) |
| return ip(xi) |
| elif method == 'linear': |
| ip = LinearNDInterpolator(points, values, fill_value=fill_value, |
| rescale=rescale) |
| return ip(xi) |
| elif method == 'cubic' and ndim == 2: |
| ip = CloughTocher2DInterpolator(points, values, fill_value=fill_value, |
| rescale=rescale) |
| return ip(xi) |
| else: |
| raise ValueError("Unknown interpolation method %r for " |
| "%d dimensional data" % (method, ndim)) |
|
|