cspline1d_eval — SciPy v1.15.2 Manual (original) (raw)
scipy.signal.
scipy.signal.cspline1d_eval(cj, newx, dx=1.0, x0=0)[source]#
Evaluate a cubic spline at the new set of points.
dx is the old sample-spacing while x0 was the old origin. In other-words the old-sample points (knot-points) for which the _cj_represent spline coefficients were at equally-spaced points of:
oldx = x0 + j*dx j=0…N-1, with N=len(cj)
Edges are handled using mirror-symmetric boundary conditions.
Parameters:
cjndarray
cublic spline coefficients
newxndarray
New set of points.
dxfloat, optional
Old sample-spacing, the default value is 1.0.
x0int, optional
Old origin, the default value is 0.
Returns:
resndarray
Evaluated a cubic spline points.
See also
Compute cubic spline coefficients for rank-1 array.
Examples
We can filter a signal to reduce and smooth out high-frequency noise with a cubic spline:
import numpy as np import matplotlib.pyplot as plt from scipy.signal import cspline1d, cspline1d_eval rng = np.random.default_rng() sig = np.repeat([0., 1., 0.], 100) sig += rng.standard_normal(len(sig))*0.05 # add noise time = np.linspace(0, len(sig)) filtered = cspline1d_eval(cspline1d(sig), time) plt.plot(sig, label="signal") plt.plot(time, filtered, label="filtered") plt.legend() plt.show()