Gaussian2D

class astropy.modeling.functional_models.Gaussian2D(amplitude=1, x_mean=0, y_mean=0, x_stddev=None, y_stddev=None, theta=None, cov_matrix=None, **kwargs)[source]

Bases: astropy.modeling.Fittable2DModel

Two dimensional Gaussian model.

Parameters
amplitudefloat

Amplitude of the Gaussian.

x_meanfloat

Mean of the Gaussian in x.

y_meanfloat

Mean of the Gaussian in y.

x_stddevfloat or None

Standard deviation of the Gaussian in x before rotating by theta. Must be None if a covariance matrix (cov_matrix) is provided. If no cov_matrix is given, None means the default value (1).

y_stddevfloat or None

Standard deviation of the Gaussian in y before rotating by theta. Must be None if a covariance matrix (cov_matrix) is provided. If no cov_matrix is given, None means the default value (1).

thetafloat, optional

Rotation angle in radians. The rotation angle increases counterclockwise. Must be None if a covariance matrix (cov_matrix) is provided. If no cov_matrix is given, None means the default value (0).

cov_matrixndarray, optional

A 2x2 covariance matrix. If specified, overrides the x_stddev, y_stddev, and theta defaults.

Other Parameters
fixeda dict, optional

A dictionary {parameter_name: boolean} of parameters to not be varied during fitting. True means the parameter is held fixed. Alternatively the fixed property of a parameter may be used.

tieddict, optional

A dictionary {parameter_name: callable} of parameters which are linked to some other parameter. The dictionary values are callables providing the linking relationship. Alternatively the tied property of a parameter may be used.

boundsdict, optional

A dictionary {parameter_name: value} of lower and upper bounds of parameters. Keys are parameter names. Values are a list or a tuple of length 2 giving the desired range for the parameter. Alternatively, the min and max properties of a parameter may be used.

eqconslist, optional

A list of functions of length n such that eqcons[j](x0,*args) == 0.0 in a successfully optimized problem.

ineqconslist, optional

A list of functions of length n such that ieqcons[j](x0,*args) >= 0.0 is a successfully optimized problem.

Notes

Model formula:

\[f(x, y) = A e^{-a\left(x - x_{0}\right)^{2} -b\left(x - x_{0}\right) \left(y - y_{0}\right) -c\left(y - y_{0}\right)^{2}}\]

Using the following definitions:

\[ \begin{align}\begin{aligned}a = \left(\frac{\cos^{2}{\left (\theta \right )}}{2 \sigma_{x}^{2}} + \frac{\sin^{2}{\left (\theta \right )}}{2 \sigma_{y}^{2}}\right)\\b = \left(\frac{\sin{\left (2 \theta \right )}}{2 \sigma_{x}^{2}} - \frac{\sin{\left (2 \theta \right )}}{2 \sigma_{y}^{2}}\right)\\c = \left(\frac{\sin^{2}{\left (\theta \right )}}{2 \sigma_{x}^{2}} + \frac{\cos^{2}{\left (\theta \right )}}{2 \sigma_{y}^{2}}\right)\end{aligned}\end{align} \]
If using a cov_matrix, the model is of the form:
\[f(x, y) = A e^{-0.5 \left(\vec{x} - \vec{x}_{0}\right)^{T} \Sigma^{-1} \left(\vec{x} - \vec{x}_{0}\right)}\]

where \(\vec{x} = [x, y]\), \(\vec{x}_{0} = [x_{0}, y_{0}]\), and \(\Sigma\) is the covariance matrix:

\[\begin{split}\Sigma = \left(\begin{array}{ccc} \sigma_x^2 & \rho \sigma_x \sigma_y \\ \rho \sigma_x \sigma_y & \sigma_y^2 \end{array}\right)\end{split}\]

\(\rho\) is the correlation between x and y, which should be between -1 and +1. Positive correlation corresponds to a theta in the range 0 to 90 degrees. Negative correlation corresponds to a theta in the range of 0 to -90 degrees.

See [1] for more details about the 2D Gaussian function.

References

1

https://en.wikipedia.org/wiki/Gaussian_function

Attributes Summary

amplitude

input_units

This property is used to indicate what units or sets of units the evaluate method expects, and returns a dictionary mapping inputs to units (or None if any units are accepted).

param_names

theta

x_fwhm

Gaussian full width at half maximum in X.

x_mean

x_stddev

y_fwhm

Gaussian full width at half maximum in Y.

y_mean

y_stddev

Methods Summary

evaluate(x, y, amplitude, x_mean, y_mean, …)

Two dimensional Gaussian function

fit_deriv(x, y, amplitude, x_mean, y_mean, …)

Two dimensional Gaussian function derivative with respect to parameters

Attributes Documentation

amplitude = Parameter('amplitude', value=1.0)
input_units

This property is used to indicate what units or sets of units the evaluate method expects, and returns a dictionary mapping inputs to units (or None if any units are accepted).

Model sub-classes can also use function annotations in evaluate to indicate valid input units, in which case this property should not be overridden since it will return the input units based on the annotations.

param_names = ('amplitude', 'x_mean', 'y_mean', 'x_stddev', 'y_stddev', 'theta')
theta = Parameter('theta', value=0.0)
x_fwhm

Gaussian full width at half maximum in X.

x_mean = Parameter('x_mean', value=0.0)
x_stddev = Parameter('x_stddev', value=1.0)
y_fwhm

Gaussian full width at half maximum in Y.

y_mean = Parameter('y_mean', value=0.0)
y_stddev = Parameter('y_stddev', value=1.0)

Methods Documentation

static evaluate(x, y, amplitude, x_mean, y_mean, x_stddev, y_stddev, theta)[source]

Two dimensional Gaussian function

static fit_deriv(x, y, amplitude, x_mean, y_mean, x_stddev, y_stddev, theta)[source]

Two dimensional Gaussian function derivative with respect to parameters