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0.1.39 imfit

Requires:

Synopsis
Fit one or more elliptical Gaussian components on an image region(s)

Arguments





Inputs

imagename

Name of the input image

allowed:

string

Default:

box

Rectangular region(s) to select in direction plane. Default is to use the entire direction plane.

allowed:

string

Default:

region

Region selection. Default is to use the full image.

allowed:

any

Default:

variant

chans

Channels to use. Default is to use all channels.

allowed:

any

Default:

variant

stokes

Stokes planes to use. Default is to use first Stokes plane.

allowed:

string

Default:

mask

Mask to use. Default is none.

allowed:

string

Default:

includepix

Range of pixel values to include for fitting.

allowed:

intArray

Default:

excludepix

Range of pixel values to exclude for fitting.

allowed:

intArray

Default:

residual

Name of output residual image.

allowed:

string

Default:

model

Name of output model image.

allowed:

string

Default:

estimates

Name of file containing initial estimates of component parameters.

allowed:

string

Default:

logfile

Name of file to write fit results.

allowed:

string

Default:

append

If logfile exists, append to it if True or overwrite it if False

allowed:

bool

Default:

True

newestimates

File to write fit results which can be used as initial estimates for next run.

allowed:

string

Default:

complist

Name of output component list table.

allowed:

string

Default:

overwrite

Overwrite component list table if it exists?

allowed:

bool

Default:

False

dooff

Also fit a zero level offset? Default is False

allowed:

bool

Default:

False

offset

Initial estimate of zero-level offset. Only used if doff is True. Default is 0.0

allowed:

double

Default:

0.0

fixoffset

Keep the zero level offset fixed during fit? Default is False

allowed:

bool

Default:

False

stretch

Stretch the mask if necessary and possible?

allowed:

bool

Default:

False

rms

RMS to use in calculation of uncertainties. Numeric or valid quantity (record or string). If numeric, it is given units of the input image. If quantity, units must conform to image units. If not positive, the rms of the residual image, in the region of the fit, is used.

allowed:

any

Default:

variant -1

noisefwhm

Noise correlation beam FWHM. If numeric value, interpreted as pixel widths. If quantity (dictionary, string), it must have angular units.

allowed:

any

Default:

variant

summary

File name to which to write table of fit parameters.

allowed:

string

Default:

Returns
void

Example

 
PARAMETER SUMMARY  
imagename        Name of the input image  
box              Rectangular region(s) to select in direction plane.  
                 for details. Default is to use the entire direction plane.  
                 eg "100, 120, 200, 220, 300, 300, 400, 400" to use two boxes.  
region           Region selection. Default is to use  
                 the full image.  
chans            Channels to use. Default is to use all  
                 channels.  
stokes           Stokes planes to use. Default is to  
                 use first Stokes plane.  
mask             Mask to use. Default is none.  
includepix       Range of pixel values to include for fitting. Array of two numeric  
                 values assumed to have same units as image pixel values. Only one  
                 of includepix or excludepix can be specified.  
excludepix       Range of pixel values to exclude for fitting. Array of two numeric  
                 values assumed to have same units as image pixel values. Only one  
                 of includepix or excludepix can be specified.  
residual         Name of the residual image to write.  
model            Name of the model image to write.  
estimates        Name of file containing initial estimates of component parameters  
                 (see below for formatting details).  
logfile          Name of file to write fit results.  
append           If logfile exists, append to it (True) or overwrite it (False).  
newestimates     File to write fit results which can be used as initial estimates  
                 for next run.  
complist         Name of output component list table.  
overwrite        Overwrite component list table if it exists?  
dooff            Simultaneously fit a zero-level offset?  
offset           Initial estimate for the zero-level offset. Only used if dooff is True.  
fixoffset        Hold zero-level offset constant during fit? Only used if dooff is True.  
stretch          Stretch the input mask if necessary and possible. Only used if a mask is specified.  
 
rms              RMS to use in calculation of various uncertainties, assumed to have units of the input  
                 image. If not positve, the rms of the residual image is used.  
noisefwhm        Noise correlation beam FWHM. If numeric value, interpreted as pixel widths. If  
                 quantity (dictionary, string), it must have angular units.  
summary          File name to which to write table of fit parameters.  
 
OVERVIEW  
This application is used to fit one or more two dimensional gaussians to sources in an image as  
well as an optional zero-level offset. Fitting is limited to a single polarization  
but can be performed over several contiguous spectral channels.  
If the image has a clean beam, the report and returned dictionary will contain both the convolved  
and the deconvolved fit results.  
 
When dooff is False, the method returns a dictionary with three keys, ’converged’, ’results’,  
and ’deconvolved’. The value of ’converged’ is a boolean array which indicates if the fit  
converged on a channel by channel basis. The value of ’results’ is a dictionary representing  
a component list reflecting the fit results. In the case of an image containing beam information,  
the sizes and position angles in the ’results’ dictionary are those of the source(s) convolved  
with the restoring beam, while the same parameters in the ’deconvolved’ dictionary represent the  
source sizes deconvolved from the beam. In the case where the image does not contain a beam,  
’deconvolved’ will be absent. Both the ’results’ and ’deconvolved’ dictionaries can  
be read into a component list tool (default tool is named cl) using the fromrecord() method  
for easier inspection using tool methods, eg  
 
cl.fromrecord(res[’results’])  
 
although this currently only works if the flux density units are conformant with Jy.  
 
There are also values in each component subdictionary not used by cl.fromrecord() but meant to  
supply additional information. There is a ’peak’ subdictionary for each component that provides the  
peak intensity of the component. It is present for both ’results’ and ’deconvolved’ components.  
There is also a ’sum’ subdictionary for each component indicated the simple sum of pixel values in  
the the original image enclosed by the fitted ellipse. There is a ’channel’ entry in the ’spectrum’  
subdictionary which provides the zero-based channel number in the input image for which the solution  
applies. In addtion, if the image has a beam(s), then there will be a ’beam’ subdictionary associated  
with each component in both the ’results’ and ’deconvolved’ dictionaries. This subdictionary will  
have three keys: ’beamarcsec’ will be a subdictionary giving the beam dimensions in arcsec,  
’beampixels’ will have the value of the beam area expressed in pixels, and ’beamster’ will have the  
value of the beam area epressed in steradians. Also, if the image has a beam(s), in the component level  
dictionaries will be an ’ispoint’ entry with an associated boolean value describing if the component  
is consistent with a point source.  
 
If dooff is True, in addtion to the specified number of  
gaussians, a zero-level offset will also be fit. The initial estimate for this  
offset is specified using the offset parameter. Units are assumed to be the  
same as the image brightness units. The zero level offset can be held constant during  
the fit by specifying fixoffset=True. In the case of dooff=True, the returned  
dictionary contains two additional keys, ’zerooff’ and ’zeroofferr’, which are both  
dictionaries containing ’unit’ and ’value’ keys. The values associated with the ’value’  
keys are arrays containing the the fitted zero level offset value and its error, respectively,  
for each channel. In cases where the fit did not converge, these values are set to NaN.  
The value associated with ’unit’ is just the i‘mage brightness unit.  
 
The region can either be specified by a box(es) or a region.  
Ranges of pixel values can be included or excluded from the fit. If specified using  
the box parameter, multiple boxes can be given using the format  
box="blcx1, blcy1, trcx1, trcy1, blcx2, blcy2, trcx2, trcy2, ... , blcxN, blcyN, trcxN, trcyN"  
where N is the number of boxes. In this case, the union of the specified boxes will be used.  
 
If specified, the residual and/or model images for successful fits will be written.  
 
If an estimates file is not specified, an attempt is made to estimate  
initial parameters and fit a single Gaussian. If a multiple Gaussian fit  
is desired, the user must specify initial estimates via a text file  
(see below for details).  
 
The user has the option of writing the result of the fit to a log file,  
and has the option of either appending to or overwriting an existing file.  
 
The user has the option of writing the (convolved) parameters of a successful  
fit to a file which can be fed back to fitcomponents() as the estimates file for a  
subsequent run.  
 
The user has the option of writing the fit results in tabular format to a file whose  
name is specified using the summary parameter.  
 
If specified and positive, the value of rms is used to calculate the parameter uncertainties,  
otherwise, the rms in the selected region in the relevant channel is used for these calculations.  
 
The noisefwhm parameter represents the noise-correlation beam FWHM. If specified as a quantity,  
it should have angular units. If specified as a numerical value, it is set equal to that number  
of pixels. If specified and greater than or equal to the pixel size, it is used to calculate  
parameter uncertainties using the correlated noise equations (see below). If it is specified but  
less than a pixel width, the the uncorrelated noise equations (see below) are used to  
compute the parameter uncertainties. If it is not specified and the image has a restoring beam(s),  
the the correlated noise equations are used to compute parameter uncertainties using the  
geometric mean of the relevant beam major and minor axes as the noise-correlation beam FWHM. If  
noisefwhm is not specified and the image does not have a restoring beam, then the uncorrelated  
noise equations are used to compute the parameter uncertainties.  
 
SUPPORTED UNITS  
 
Currently only images with brightness units conformant with Jy/beam, Jy.km/s/beam, and K are fully  
supported for fitting. If your image has some other base brightness unit, that unit will be assumed  
to be equivalent to Jy/pixel and results will be calculated accordingly. In particular,  
the flux density (reported as Integrated Flux in the logger and associated with the "flux" key  
in the returned component subdictionary(ies)) for such a case represents the sum of pixel values.  
 
Note also that converting the returned results subdictionary to a component list via cl.fromrecord() currently  
only works properly if the flux density units in the results dictionary are conformant with Jy.  
If you need to be able to run cl.fromrecord() on the resulting dictionary you can first modify the  
flux density units by hand to be (some prefix)Jy and then run cl.fromrecord() on that dictionary,  
bearing in mind your unit conversion.  
 
If the input image has units of K, the flux density of components will be reported in units  
of [prefix]K*rad*rad, where prefix is an SI prefix used so that the numerical value is between  
1 and 1000. To convert to units of K*beam, determine the area of the appropriate beam,  
which is given by pi/(4*ln(2))*bmaj*bmin, where bmaj and bmin are the major and minor axes  
of the beam, and convert to steradians (=rad*rad). This value is included in the beam portion  
of the component subdictionary (key ’beamster’). Then divide the numerical value of the  
logged flux density by the beam area in steradians. So, for example  
 
\begin{verbatim}  
# run on an image with K brightness units  
res = imfit(...)  
# get the I flux density in K*beam of component 0  
comp = res[’results’][’component0’]  
flux_density_kbeam = comp[’flux’][’value’][0]/comp[’beam’][’beamster’]

FITTING OVER MULTIPLE CHANNELS

For fitting over multiple channels, the result of the previous successful fit is used as the estimate for the next channel. The number of gaussians fit cannot be varied on a channel by channel basis. Thus the variation of source structure should be reasonably smooth in frequency to produce reliable fit results.

MASK SPECIFICATION

Mask specification can be done using an LEL expression. For example

mask = ’”myimage”¿5’ will use only pixels with values greater than 5.

INCLUDING AND EXCLUDING PIXELS

Pixels can be included or excluded from the fit based on their values using these parameters. Note that specifying both is not permitted and will cause an error. If specified, both take an array of two numeric values.

ESTIMATES

Initial estimates of fit parameters may be specified via an estimates text file. Each line of this file should contain a set of parameters for a single gaussian. Optionally, some of these parameters can be fixed during the fit. The format of each line is

peak intensity, peak x-pixel value, peak y-pixel value, major axis, minor axis, position angle, fixed

The fixed parameter is optional. The peak intensity is assumed to be in the same units as the image pixel values (eg Jy/beam). The peak coordinates are specified in pixel coordinates. The major and minor axes and the position angle are the convolved parameters if the image has been convolved with a clean beam and are specified as quantities. The fixed parameter is optional and is a string. It may contain any combination of the following characters ’f’ (peak intensity), ’x’ (peak x position), ’y’ (peak y position), ’a’ (major axis), ’b’ (minor axis), ’p’ (position angle).

In addition, lines in the file starting with a # are considered comments.

An example of such a file is:

# peak intensity must be in map units  
120, 150, 110, 23.5arcsec, 18.9arcsec, 120deg  
90, 60, 200, 46arcsec, 23arcsec, 140deg, fxp

This is a file which specifies that two gaussians are to be simultaneously fit, and for the second gaussian the specified peak intensity, x position, and position angle are to be held fixed during the fit.

ERROR ESTIMATES

Error estimates are based on the work of Condon 1997, PASP, 109, 166. Key assumptions made are: * The given model (elliptical Gaussian, or elliptical Gaussian plus constant offset) is an adequate representation of the data * An accurate estimate of the pixel noise is provided or can be derived (see above). For the case of correlated noise (e.g., a CLEAN map), the fit region should contain many ”beams” or an independent value of rms should be provided. * The signal-to-noise ratio (SNR) or the Gaussian component is large. This is necessary because a Taylor series is used to linearize the problem. Condon (1997) states that the fractional bias in the fitted amplitude due to this assumption is of order 1/(S*S), where S is the overall SNR of the Gaussian with respect to the given data set (defined more precisely below). For a 5 sigma ”detection” of the Gaussian, this is a 4% effect. * All (or practically all) of the flux in the component being fit falls within the selected region. If a constant offset term is simultaneously fit and not fixed, the region of interest should be even larger. The derivations of the expressions summarized in this note assume an effectively infinite region.

Two sets of equations are used to calculate the parameter uncertainties, based on if the noise is correlated or uncorrelated. The rules governing which set of equations are used have been described above in the description of the noisefwhm parameter.

In the case of uncorrelated noise, the equations used are

f(A) = f(I) = f(M) = f(m) = k*s(x)/M = k*s(y)/m = (s(p)/sqrt(2))*((M*M - m*m)/(M*m)) = sqrt(2)/S

where s(z) is the uncertainty associated with parameter z, f(z) = s(z)/abs(z) is the fractional uncertainty associated with parameter z, A is the peak intensity, I is the flux density, M and m are the FWHM major and minor axes, p is the position angle of the component, and k = sqrt(8*ln(2)). s(x) and s(y) are the direction uncertainties of the component measured along the major and minor axes; the resulting uncertainties measured along the principle axes of the image direction coordinate are calculated by propagation of errors using the 2D rotation matrix which enacts the rotation through the position angle plus 90 degrees. S is the overall signal to noise ratio of the component, which, for the uncorrelated noise case is given by

S = (A/(k*h*r))*sqrt(pi*M*m)

where h is the pixel width of the direction coordinate and r is the rms noise (see the discussion above for the rules governing how the value of r is determined).

For the correlated noise case, the same equations are used to determine the uncertainties as in the uncorrelated noise case, except for the uncertainty in I (see below). However, S is given by

S = (A/(2*r*N)) * sqrt(M*m) * (1 + ((N*N/(M*M)))**(a/2)) * (1 + ((N*N/(m*m)))**(b/2))

where N is the noise-correlation beam FWHM (see discussion of the noisefwhm parameter for rules governing how this value is determined). ”**” indicates exponentiation and a and b depend on which uncertainty is being calculated. For sigma(A), a = b = 3/2. For M and x, a = 5/2 and b = 1/2. For m, y, and p, a = 1/2 and b = 5/2. f(I) is calculated in the correlated noise case according to

f(I) = sqrt( f(A)*f(A) + (N*N/(M*m))*(f(M*f(M) + f(m)*f(m))) )

Note well the following caveats: * Fixing Gaussian component parameters will tend to cause the parameter uncertainties reported for free parameters to be overestimated. * Fitting a zero level offset that is not fixed will tend to cause the reported parameter uncertainties to be slightly underestimated. * The parameter uncertainties will be inaccurate at low SNR (a ~10% for SNR = 3). * If the fitted region is not considerably larger than the largest component that is fit, parameter uncertainties may be mis-estimated. * An accurate rms noise measurement, r, for the region in question must be supplied. Alternatively, a sufficiently large signal-free region must be present in the selected region (at least about 25 noise beams in area) to auto-derive such an estimate. * If the image noise is not statistically independent from pixel to pixel, a reasonably accurate noise correlation scale, N, must be provided. If the noise correlation function is not approximately Gaussian, the correlation length can be estimated using

N = sqrt(2*ln(2)/pi)* double-integral(dx dy C(x,y))/sqrt(double-integral(dx dy C(x, y) * C(x,y)))

where C(x,y) is the associated noise-smoothing function * If fitted model components have significan spatial overlap, the parameter uncertainties are likely to be mis-estimated (i.e., correlations between the parameters of separate components are not accounted for). * If the image being analyzed is an interferometric image with poor uv sampling, the parameter uncertainties may be significantly underestimated.

The deconvolved size and position angle errors are computed by taking the maximum of the absolute values of the differences of the best fit deconvolved value of the given parameter and the deconvolved size of the eight possible combinations of (FWHM major axis +/- major axis error), (FWHM minor axis +/- minor axis error), and (position andle +/- position angle error). If the source cannot be deconvolved from the beam (if the best fit convolved source size cannot be deconvolved from the beam), upper limits on the deconvolved source size are sometimes reported. These limits simply come from the maximum major and minor axes of the deconvolved gaussians taken from trying all eight of the aforementioned combinations. In the case none of these combinations produces a deconvolved size, no upper limit is reported.

EXAMPLE:

Here is how one might fit two gaussians to multiple channels of a cube using the fit from the previous channel as the initial estimate for the next. It also illustrates how one can specify a region in the associated continuum image as the region to use as the fit for the channel.

default imfit  
imagename = "co_cube.im"  
# specify region using region from continuum  
region = "continuum.im:source.rgn"  
chans = "2~20"  
# only use pixels with positive values in the fit  
excludepix = [-1e10,0]  
# estimates file contains initial parameters for two Gaussians in channel 2  
estimates = "initial_estimates.txt"  
logfile = "co_fit.log"  
# append results to the log file for all the channels  
append = "True"  
imfit()  
 


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