# Bézier curve fitting with SciPy

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I have a set of points which approximate a 2D curve. I would like to use Python with numpy and scipy to find a cubic Bézier path which approximately fits the points, where I specify the exact coordinates of two endpoints, and it returns the coordinates of the other two control points.

I initially thought `scipy.interpolate.splprep()` might do what I want, but it seems to force the curve to pass through each one of the data points (as I suppose you would want for interpolation). I'll assume that I was on the wrong track with that.

My question is similar to this one: How can I fit a Bézier curve to a set of data?, except that they said they didn't want to use numpy. My preference would be to find what I need already implemented somewhere in scipy or numpy. Otherwise, I plan to implement the algorithm linked from one of the answers to that question, using numpy: An algorithm for automatically fitting digitized curves.

Thank you for any suggestions!

Edit: I understand that a cubic Bézier curve is not guaranteed to pass through all the points; I want one which passes through two given endpoints, and which is as close as possible to the specified interior points.

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Here is a piece of python code for fitting points:

``````'''least square qbezier fit using penrose pseudoinverse
V=array
E,  W,  N,  S =  V((1,0)), V((-1,0)), V((0,1)), V((0,-1))
cw = 100
ch = 300
cpb = V((0, 0))
cpe = V((cw, 0))
cp=[cpb,cpb+ch*N+E*cw/8,cpe+ch*N+E*cw/8, cpe]
ts = V(range(11))/10
M = bezierM (ts)
points = M*xys #produces the points on the bezier curve at t in ts
control_points=lsqfit(points, M)
linalg.norm(control_points-xys)<10e-5
control_points.tolist()
'''
from numpy import array, linalg, matrix
from scipy.misc import comb as nOk
Mtk = lambda n, t, k: t**(k)*(1-t)**(n-k)*nOk(n,k)
bezierM = lambda ts: matrix([[Mtk(3,t,k) for k in range(4)] for t in ts])
def lsqfit(points,M):
M_ = linalg.pinv(M)
return M_ * points
``````

Generally on bezier curves check out Animated bezier and bezierinfo

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 This sounds more like what I'm looking for, thank you. I'm trying to understand what the variable `xys` in the commented example should be. The two links are very useful, I'm reading "bezierinfo" and will report back here if it clears things up. – Craig Baker Apr 3 at 21:28 It seems that the example contains a few errors. First, the line that starts with `ts = V...` rounds all of the `t`s to integers 0 or 1; adding the argument `dtype='float'` fixes this. Second, the variable `xys` is introduced erroneously, and should be replaced with `points` in all instances, where `points` is an array of data points to fit having shape [t, 2]. Let me know if I'm incorrect. The paper Bézier curve fitting helped me to understand this approach. Accepting answer since it is the only one to address Bézier curve fitting. – Craig Baker Apr 23 at 17:55

Here's a way to do Bezier curves with numpy:

``````import numpy as np
from scipy.misc import comb

def bernstein_poly(i, n, t):
"""
The Bernstein polynomial of n, i as a function of t
"""

return comb(n, i) * ( t**(n-i) ) * (1 - t)**i

def bezier_curve(points, nTimes=1000):
"""
Given a set of control points, return the
bezier curve defined by the control points.

points should be a list of lists, or list of tuples
such as [ [1,1],
[2,3],
[4,5], ..[Xn, Yn] ]
nTimes is the number of time steps, defaults to 1000

See http://processingjs.nihongoresources.com/bezierinfo/
"""

nPoints = len(points)
xPoints = np.array([p[0] for p in points])
yPoints = np.array([p[1] for p in points])

t = np.linspace(0.0, 1.0, nTimes)

polynomial_array = np.array([ bernstein_poly(i, nPoints-1, t) for i in range(0, nPoints)   ])

xvals = np.dot(xPoints, polynomial_array)
yvals = np.dot(yPoints, polynomial_array)

return xvals, yvals

if __name__ == "__main__":
from matplotlib import pyplot as plt

nPoints = 4
points = np.random.rand(nPoints,2)*200
xpoints = [p[0] for p in points]
ypoints = [p[1] for p in points]

xvals, yvals = bezier_curve(points, nTimes=1000)
plt.plot(xvals, yvals)
plt.plot(xpoints, ypoints, "ro")
for nr in range(len(points)):
plt.text(points[nr][0], points[nr][1], nr)

plt.show()
``````
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 Thank you for the information, but this does not appear to be an algorithm for fitting a Bézier curve, it is an algorithm for evaluating a given Bézier curve. – Craig Baker Apr 23 at 18:09

A Bezier curve isn't guaranteed to pass through every point you supply it with; control points are arbitrary (in the sense that there is no specific algorithm for finding them, you simply choose them yourself) and only pull the curve in a direction.

If you want a curve which will pass through every point you supply it with, you need something like a natural cubic spline, and due to the limitations of those (you must supply them with increasing x co-ordinates, or it tends to infinity), you'll probably want a parametric natural cubic spline.

There are nice tutorials here:

Cubic Splines

Parametric Cubic Splines

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Thank you for the information, but I must not have specified the question clearly enough. I understand that a cubic Bézier curve is not guaranteed to pass through all the points; I want one which passes through two given endpoints, and which is as close as possible to the specified interior points. – Craig Baker Sep 28 '12 at 18:47

Short answer: you don't, because that's not how Bezier curve work. Longer answer: have a look at Catmull-Rom splines instead. They're pretty easy to form (the tangent vector at any point P, barring start and end, is parallel to the lines {P-1,P+1}, so they're easy to program, too) and always pass through the points that define them, unlike Bezier curves, which interpolates "somewhere" inside the convex hull set up by all the control points.

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