Source code for safe.common.interpolation2d

"""**Module for 2D interpolation over a rectangular mesh**

This module:

* provides piecewise constant (nearest neighbour) and bilinear interpolation
* is fast (based on numpy vector operations)
* depends only on numpy
* guarantees that interpolated values never exceed the four nearest neighbours
* handles missing values in domain sensibly using NaN
* is unit tested with a range of common and corner cases

See end of this file for documentation of the mathematical derivation used.
"""

__author__ = 'Ole Nielsen <ole.moller.nielsen@gmail.com>'
__revision__ = '$Format:%H$'
__date__ = '01/11/2010'
__license__ = "GPL"
__copyright__ = 'Copyright 2012, Australia Indonesia Facility for '
__copyright__ += 'Disaster Reduction'


import logging
import numpy
from safe.common.exceptions import BoundsError, InaSAFEError

LOGGER = logging.getLogger('InaSAFE')
# pylint: disable=W0105


[docs]def interpolate2d(x, y, Z, points, mode='linear', bounds_error=False): """Fundamental 2D interpolation routine Args: * x: 1D array of x-coordinates of the mesh on which to interpolate * y: 1D array of y-coordinates of the mesh on which to interpolate * Z: 2D array of values for each x, y pair * points: Nx2 array of coordinates where interpolated values are sought * mode: Determines the interpolation order. Options are * 'constant' - piecewise constant nearest neighbour interpolation * 'linear' - bilinear interpolation using the four nearest neighbours (default) * bounds_error: Boolean flag. If True (default) a BoundsError exception will be raised when interpolated values are requested outside the domain of the input data. If False, nan is returned for those values Returns: * 1D array with same length as points with interpolated values Raises: Exception, BoundsError (see note about bounds_error) Notes: Input coordinates x and y are assumed to be monotonically increasing, but need not be equidistantly spaced. No such assumption regarding ordering of points is made. Z is assumed to have dimension M x N, where M = len(x) and N = len(y). In other words it is assumed that the x values follow the first (vertical) axis downwards and y values the second (horizontal) axis from left to right. If this routine is to be used for interpolation of raster grids where data is typically organised with longitudes (x) going from left to right and latitudes (y) from left to right then user interpolate_raster in this module """ # Input checks x, y, Z, xi, eta = check_inputs(x, y, Z, points, mode, bounds_error) # Identify elements that are outside interpolation domain or NaN outside = (xi < x[0]) + (eta < y[0]) + (xi > x[-1]) + (eta > y[-1]) outside += numpy.isnan(xi) + numpy.isnan(eta) inside = -outside xi = xi[inside] eta = eta[inside] # Find upper neighbours for each interpolation point idx = numpy.searchsorted(x, xi, side='left') idy = numpy.searchsorted(y, eta, side='left') # Internal check (index == 0 is OK) msg = ('Interpolation point outside domain. This should never happen. ' 'Please email Ole.Moller.Nielsen@gmail.com') if len(idx) > 0: if not max(idx) < len(x): raise InaSAFEError(msg) if len(idy) > 0: if not max(idy) < len(y): raise InaSAFEError(msg) # Get the four neighbours for each interpolation point x0 = x[idx - 1] x1 = x[idx] y0 = y[idy - 1] y1 = y[idy] z00 = Z[idx - 1, idy - 1] z01 = Z[idx - 1, idy] z10 = Z[idx, idy - 1] z11 = Z[idx, idy] # Coefficients for weighting between lower and upper bounds oldset = numpy.seterr(invalid='ignore') # Suppress warnings alpha = (xi - x0) / (x1 - x0) beta = (eta - y0) / (y1 - y0) numpy.seterr(**oldset) # Restore if mode == 'linear': # Bilinear interpolation formula dx = z10 - z00 dy = z01 - z00 z = z00 + alpha * dx + beta * dy + alpha * beta * (z11 - dx - dy - z00) else: # Piecewise constant (as verified in input_check) # Set up masks for the quadrants left = alpha < 0.5 right = -left lower = beta < 0.5 upper = -lower lower_left = lower * left lower_right = lower * right upper_left = upper * left # Initialise result array with all elements set to upper right z = z11 # Then set the other quadrants z[lower_left] = z00[lower_left] z[lower_right] = z10[lower_right] z[upper_left] = z01[upper_left] # Self test if len(z) > 0: mz = numpy.nanmax(z) mZ = numpy.nanmax(Z) msg = ('Internal check failed. Max interpolated value %.15f ' 'exceeds max grid value %.15f ' % (mz, mZ)) if not(numpy.isnan(mz) or numpy.isnan(mZ)): if not mz <= mZ: raise InaSAFEError(msg) # Populate result with interpolated values for points inside domain # and NaN for values outside r = numpy.zeros(len(points)) r[inside] = z r[outside] = numpy.nan return r
[docs]def interpolate_raster(x, y, Z, points, mode='linear', bounds_error=False): """2D interpolation of raster data It is assumed that data is organised in matrix Z as latitudes from bottom up along the first dimension and longitudes from west to east along the second dimension. Further it is assumed that x is the vector of longitudes and y the vector of latitudes. See interpolate2d for details of the interpolation routine """ # Flip matrix Z up-down to interpret latitudes ordered from south to north Z = numpy.flipud(Z) # Transpose Z to have y coordinates along the first axis and x coordinates # along the second axis Z = Z.transpose() # Call underlying interpolation routine and return res = interpolate2d(x, y, Z, points, mode=mode, bounds_error=bounds_error) return res
[docs]def check_inputs(x, y, Z, points, mode, bounds_error): """Check inputs for interpolate2d function """ msg = ('Only mode "linear" and "constant" are implemented. ' 'I got "%s"' % mode) if mode not in ['linear', 'constant']: raise InaSAFEError(msg) x = numpy.array(x) try: y = numpy.array(y) except Exception, e: msg = ('Input vector y could not be converted to numpy array: ' '%s' % str(e)) raise Exception(msg) msg = ('Input vector x must be monotoneously increasing. I got ' 'min(x) == %.15f, but x[0] == %.15f' % (min(x), x[0])) if not min(x) == x[0]: raise InaSAFEError(msg) msg = ('Input vector y must be monotoneously increasing. ' 'I got min(y) == %.15f, but y[0] == %.15f' % (min(y), y[0])) if not min(y) == y[0]: raise InaSAFEError(msg) msg = ('Input vector x must be monotoneously increasing. I got ' 'max(x) == %.15f, but x[-1] == %.15f' % (max(x), x[-1])) if not max(x) == x[-1]: raise InaSAFEError(msg) msg = ('Input vector y must be monotoneously increasing. I got ' 'max(y) == %.15f, but y[-1] == %.15f' % (max(y), y[-1])) if not max(y) == y[-1]: raise InaSAFEError(msg) try: Z = numpy.array(Z) m, n = Z.shape except Exception, e: msg = 'Z must be a 2D numpy array: %s' % str(e) raise Exception(msg) Nx = len(x) Ny = len(y) msg = ('Input array Z must have dimensions %i x %i corresponding to the ' 'lengths of the input coordinates x and y. However, ' 'Z has dimensions %i x %i.' % (Nx, Ny, m, n)) if not (Nx == m and Ny == n): raise InaSAFEError(msg) # Get interpolation points points = numpy.array(points) xi = points[:, 0] eta = points[:, 1] if bounds_error: xi0 = min(xi) xi1 = max(xi) eta0 = min(eta) eta1 = max(eta) msg = ('Interpolation point xi=%f was less than the smallest ' 'value in domain (x=%f) and bounds_error was requested.' % (xi0, x[0])) if xi0 < x[0]: raise BoundsError(msg) msg = ('Interpolation point xi=%f was greater than the largest ' 'value in domain (x=%f) and bounds_error was requested.' % (xi1, x[-1])) if xi1 > x[-1]: raise BoundsError(msg) msg = ('Interpolation point eta=%f was less than the smallest ' 'value in domain (y=%f) and bounds_error was requested.' % (eta0, y[0])) if eta0 < y[0]: raise BoundsError(msg) msg = ('Interpolation point eta=%f was greater than the largest ' 'value in domain (y=%f) and bounds_error was requested.' % (eta1, y[-1])) if eta1 > y[-1]: raise BoundsError(msg) return x, y, Z, xi, eta # Mathematical derivation of the interpolation formula used
""" Bilinear interpolation is based on the standard 1D linear interpolation formula: Given points (x0, y0) and (x1, x0) and a value of x where x0 <= x <= x1, the linearly interpolated value y at x is given as alpha*(y1-y0) + y0 or alpha*y1 + (1-alpha)*y0 (1) where alpha = (x-x0)/(x1-x0) (1a) 2D bilinear interpolation aims at obtaining an interpolated value z at a point (x,y) which lies inside a square formed by points (x0, y0), (x1, y0), (x0, y1) and (x1, y1) for which values z00, z10, z01 and z11 are known. This obtained be first applying equation (1) twice in in the x-direction to obtain interpolated points q0 and q1 for (x, y0) and (x, y1), respectively. q0 = alpha*z10 + (1-alpha)*z00 (2) and q1 = alpha*z11 + (1-alpha)*z01 (3) Then using equation (1) in the y-direction on the results from (2) and (3) z = beta*q1 + (1-beta)*q0 (4) where beta = (y-y0)/(y1-y0) (4a) Substituting (2) and (3) into (4) yields z = alpha*beta*z11 + beta*z01 - alpha*beta*z01 + alpha*z10 + z00 - alpha*z00 - alpha*beta*z10 - beta*z00 + alpha*beta*z00 = alpha*beta*(z11 - z01 - z10 + z00) + alpha*(z10 - z00) + beta*(z01 - z00) + z00 which can be further simplified to z = alpha*beta*(z11 - dx - dy - z00) + alpha*dx + beta*dy + z00 (5) where dx = z10 - z00 dy = z01 - z00 Equation (5) is what is implemented in the function interpolate2d above. Piecewise constant interpolation can be implemented using the same coefficients (1a) and (4a) that are used for bilinear interpolation as they are a measure of the relative distance to the left and lower neigbours. A value of 0 will pick the left or lower bound whereas a value of 1 will pick the right or higher bound. Hence z can be assigned to its nearest neigbour as follows | z00 alpha < 0.5 and beta < 0.5 # lower left corner | | z10 alpha >= 0.5 and beta < 0.5 # lower right corner z = | | z01 alpha < 0.5 and beta >= 0.5 # upper left corner | | z11 alpha >= 0.5 and beta >= 0.5 # upper right corner """ # pylint: enable=W0105