scipy.interpolate.bisplrep¶
- 
scipy.interpolate.bisplrep(x, y, z, w=None, xb=None, xe=None, yb=None, ye=None, kx=3, ky=3, task=0, s=None, eps=1e-16, tx=None, ty=None, full_output=0, nxest=None, nyest=None, quiet=1)[source]¶
- Find a bivariate B-spline representation of a surface. - Given a set of data points (x[i], y[i], z[i]) representing a surface z=f(x,y), compute a B-spline representation of the surface. Based on the routine SURFIT from FITPACK. - Parameters
- x, y, zndarray
- Rank-1 arrays of data points. 
- wndarray, optional
- Rank-1 array of weights. By default - w=np.ones(len(x)).
- xb, xefloat, optional
- End points of approximation interval in x. By default - xb = x.min(), xe=x.max().
- yb, yefloat, optional
- End points of approximation interval in y. By default - yb=y.min(), ye = y.max().
- kx, kyint, optional
- The degrees of the spline (1 <= kx, ky <= 5). Third order (kx=ky=3) is recommended. 
- taskint, optional
- If task=0, find knots in x and y and coefficients for a given smoothing factor, s. If task=1, find knots and coefficients for another value of the smoothing factor, s. bisplrep must have been previously called with task=0 or task=1. If task=-1, find coefficients for a given set of knots tx, ty. 
- sfloat, optional
- A non-negative smoothing factor. If weights correspond to the inverse of the standard-deviation of the errors in z, then a good s-value should be found in the range - (m-sqrt(2*m),m+sqrt(2*m))where m=len(x).
- epsfloat, optional
- A threshold for determining the effective rank of an over-determined linear system of equations (0 < eps < 1). eps is not likely to need changing. 
- tx, tyndarray, optional
- Rank-1 arrays of the knots of the spline for task=-1 
- full_outputint, optional
- Non-zero to return optional outputs. 
- nxest, nyestint, optional
- Over-estimates of the total number of knots. If None then - nxest = max(kx+sqrt(m/2),2*kx+3),- nyest = max(ky+sqrt(m/2),2*ky+3).
- quietint, optional
- Non-zero to suppress printing of messages. This parameter is deprecated; use standard Python warning filters instead. 
 
- Returns
- tckarray_like
- A list [tx, ty, c, kx, ky] containing the knots (tx, ty) and coefficients (c) of the bivariate B-spline representation of the surface along with the degree of the spline. 
- fpndarray
- The weighted sum of squared residuals of the spline approximation. 
- ierint
- An integer flag about splrep success. Success is indicated if ier<=0. If ier in [1,2,3] an error occurred but was not raised. Otherwise an error is raised. 
- msgstr
- A message corresponding to the integer flag, ier. 
 
 - See also - Notes - See - bisplevto evaluate the value of the B-spline given its tck representation.- References - 1
- Dierckx P.:An algorithm for surface fitting with spline functions Ima J. Numer. Anal. 1 (1981) 267-283. 
- 2
- Dierckx P.:An algorithm for surface fitting with spline functions report tw50, Dept. Computer Science,K.U.Leuven, 1980. 
- 3
- Dierckx P.:Curve and surface fitting with splines, Monographs on Numerical Analysis, Oxford University Press, 1993. 
 
