Fitting a 2D Gaussian function using scipy.optimize.curve_fit - ValueError and minpack.error

匿名 (未验证) 提交于 2019-12-03 01:12:01

问题:

I intend to fit a 2D Gaussian function to images showing a laser beam to get its parameters like FWHM and position. So far I tried to understand how to define a 2D Gaussian function in Python and how to pass x and y variables to it.

I've written a little script which defines that function, plots it, adds some noise to it and then tries to fit it using curve_fit. Everything seems to work except the last step in which I try to fit my model function to the noisy data. Here is my code:

import scipy.optimize as opt import numpy as np import pylab as plt   #define model function and pass independant variables x and y as a list def twoD_Gaussian((x,y), amplitude, xo, yo, sigma_x, sigma_y, theta, offset):     xo = float(xo)     yo = float(yo)         a = (np.cos(theta)**2)/(2*sigma_x**2) + (np.sin(theta)**2)/(2*sigma_y**2)     b = -(np.sin(2*theta))/(4*sigma_x**2) + (np.sin(2*theta))/(4*sigma_y**2)     c = (np.sin(theta)**2)/(2*sigma_x**2) + (np.cos(theta)**2)/(2*sigma_y**2)     return offset + amplitude*np.exp( - (a*((x-xo)**2) + 2*b*(x-xo)*(y-yo) + c*((y-yo)**2)))  # Create x and y indices x = np.linspace(0, 200, 201) y = np.linspace(0, 200, 201) x,y = np.meshgrid(x, y)  #create data data = twoD_Gaussian((x, y), 3, 100, 100, 20, 40, 0, 10)  # plot twoD_Gaussian data generated above plt.figure() plt.imshow(data) plt.colorbar()  # add some noise to the data and try to fit the data generated beforehand initial_guess = (3,100,100,20,40,0,10)  data_noisy = data + 0.2*np.random.normal(size=len(x))  popt, pcov = opt.curve_fit(twoD_Gaussian, (x,y), data_noisy, p0 = initial_guess)

Here is the error message I get when running the script using winpython 64-bit Python 2.7:

ValueError: object too deep for desired array Traceback (most recent call last):   File "", line 1, in    File "C:\Python\WinPython-64bit-2.7.6.2\python-2.7.6.amd64\lib\site-packages\spyderlib\widgets\externalshell\sitecustomize.py", line 540, in runfile     execfile(filename, namespace)   File "E:/Work Computer/Software/Python/Fitting scripts/2D Gaussian function fit/2D_Gaussian_LevMarq_v2.py", line 39, in      popt, pcov = opt.curve_fit(twoD_Gaussian, (x,y), data_noisy, p0 = initial_guess)   File "C:\Python\WinPython-64bit-2.7.6.2\python-2.7.6.amd64\lib\site-packages\scipy\optimize\minpack.py", line 533, in curve_fit     res = leastsq(func, p0, args=args, full_output=1, **kw)   File "C:\Python\WinPython-64bit-2.7.6.2\python-2.7.6.amd64\lib\site-packages\scipy\optimize\minpack.py", line 378, in leastsq     gtol, maxfev, epsfcn, factor, diag) minpack.error: Result from function call is not a proper array of floats.

What is it that am I doing wrong? Is it how I pass the independent variables to the model function/curve_fit?

回答1:

The output of twoD_Gaussian needs to be 1D. What you can do is add a .ravel() onto the end of the last line, like this:

def twoD_Gaussian((x, y), amplitude, xo, yo, sigma_x, sigma_y, theta, offset):     xo = float(xo)     yo = float(yo)         a = (np.cos(theta)**2)/(2*sigma_x**2) + (np.sin(theta)**2)/(2*sigma_y**2)     b = -(np.sin(2*theta))/(4*sigma_x**2) + (np.sin(2*theta))/(4*sigma_y**2)     c = (np.sin(theta)**2)/(2*sigma_x**2) + (np.cos(theta)**2)/(2*sigma_y**2)     g = offset + amplitude*np.exp( - (a*((x-xo)**2) + 2*b*(x-xo)*(y-yo)                              + c*((y-yo)**2)))     return g.ravel()

You'll obviously need to reshape the output for plotting, e.g:

# Create x and y indices x = np.linspace(0, 200, 201) y = np.linspace(0, 200, 201) x, y = np.meshgrid(x, y)  #create data data = twoD_Gaussian((x, y), 3, 100, 100, 20, 40, 0, 10)  # plot twoD_Gaussian data generated above plt.figure() plt.imshow(data.reshape(201, 201)) plt.colorbar()

Do the fitting as before:

# add some noise to the data and try to fit the data generated beforehand initial_guess = (3,100,100,20,40,0,10)  data_noisy = data + 0.2*np.random.normal(size=data.shape)  popt, pcov = opt.curve_fit(twoD_Gaussian, (x, y), data_noisy, p0=initial_guess)

And plot the results:

data_fitted = twoD_Gaussian((x, y), *popt)  fig, ax = plt.subplots(1, 1) ax.hold(True) ax.imshow(data_noisy.reshape(201, 201), cmap=plt.cm.jet, origin='bottom',     extent=(x.min(), x.max(), y.min(), y.max())) ax.contour(x, y, data_fitted.reshape(201, 201), 8, colors='w') plt.show()



回答2:

curve_fit() wants to the dimension of xdata to be (2,n*m) and not (2,n,m). ydata should have shape (n*m) not (n,m) respectively. So you use ravel() to flatten your 2D arrays:

xdata = np.vstack((xx.ravel(),yy.ravel())) ydata = data_noisy.ravel() popt, pcov = opt.curve_fit(twoD_Gaussian, xdata, ydata, p0=initial_guess)

By the way: I'm not sure if the parametrization with the trigonometric terms is the best one. E.g., taking the one described here might be a bit more robust under numerical aspects and large deviations.



回答3:

To expand on Dietrich's answer a bit, I got the following error when running the suggested solution with Python 3.4 (on Ubuntu 14.04):

def twoD_Gaussian((x, y), amplitude, xo, yo, sigma_x, sigma_y, theta, offset):                   ^ SyntaxError: invalid syntax

Running 2to3 suggested the following simple fix:

def twoD_Gaussian(xdata_tuple, amplitude, xo, yo, sigma_x, sigma_y, theta, offset):     (x, y) = xdata_tuple                                                             xo = float(xo)                                                                   yo = float(yo)                                                                   a = (np.cos(theta)**2)/(2*sigma_x**2) + (np.sin(theta)**2)/(2*sigma_y**2)        b = -(np.sin(2*theta))/(4*sigma_x**2) + (np.sin(2*theta))/(4*sigma_y**2)         c = (np.sin(theta)**2)/(2*sigma_x**2) + (np.cos(theta)**2)/(2*sigma_y**2)        g = offset + amplitude*np.exp( - (a*((x-xo)**2) + 2*b*(x-xo)*(y-yo)                                  + c*((y-yo)**2)))                                        return g.ravel()

The reason for this is that automatic tuple unpacking when it is passed to a function as a parameter has been removed as of Python 3. For more information see here: PEP 3113



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