Using an Exposure Map in Fitting Image Data
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Sherpa Threads (CIAO 4.1)
[Python Syntax]
OverviewLast Update: 29 Apr 2009 - new script command is available with CIAO 4.1.2 Synopsis: This thread shows how to use an exposure map when fitting 2-D spatial data. The exposure map file is input to Sherpa as a file-based exposure map model via the load_table_model function. |
Contents
- Getting Started
- Reading and Plotting 2-D FITS Data
- Setting the Exposure Map
- Defining and Fitting the Source
- Saving a Sherpa Session
- Scripting It
- Summary
- History
- Images
Reading and Plotting 2-D FITS Data
We are using 2-D spatial data from the FITS datafile img.fits. This data set is input to Sherpa with the load_image command:
sherpa> load_image("img.fits")
sherpa> show_data()
Data Set: 1
Filter:
name = img.fits
x0 = Float64[6400]
x1 = Float64[6400]
y = Float64[6400]
shape = (80, 80)
staterror = None
syserror = None
sky = physical
crval = [ 3944. 3920.]
crpix = [ 0.5 0.5]
cdelt = [ 5. 5.]
eqpos = world
crval = [ 40.0117 59.9967]
crpix = [ 4096.5 4096.5]
cdelt = [-0.0001 0.0001]
crota = 0
epoch = 2000
equinox = 2000
coord = logical
The data set may be viewed as a contour plot (contour_data) or an image (image_data). Here we show the contour plot method, creating a PostScript file of the output as well:
sherpa> contour_data() sherpa> print_window("contour_plot")
This creates Figure 1.
Setting the Exposure Map
We define a file-based exposure map model by loading an exposure map file with the load_table_model command:
sherpa> load_table_model("emap", "expmap.fits")
To display the status of the model emap, use the print() command; notice that Sherpa identifies the exposure map model as "tablemodel.emap":
sherpa> print(emap) tablemodel.emap Param Type Value Min Max Units ----- ---- ----- --- --- ----- emap.ampl thawed 1 -3.40282e+38 3.40282e+38
Defining and Fitting the Source
One can now define a model to be used as a source model. After viewing Figure 1, the BETA2D model is found to be a promising candidate for the source. The BETA2D model is defined for the source with set_model, then the initial parameter values are specified:
sherpa> set_model(beta2d.b1*emap) sherpa> show_model() Model: 1 (beta2d.b1 * tablemodel.emap) Param Type Value Min Max Units ----- ---- ----- --- --- ----- b1.r0 thawed 10 1.17549e-38 3.40282e+38 b1.xpos thawed 0 -3.40282e+38 3.40282e+38 b1.ypos thawed 0 -3.40282e+38 3.40282e+38 b1.ellip frozen 0 0 0.999 b1.theta frozen 0 0 6.28319 radians b1.ampl thawed 1 -3.40282e+38 3.40282e+38 b1.alpha thawed 1 -10 10 emap.ampl thawed 1 -3.40282e+38 3.40282e+38 sherpa> b1.r0 = 30 sherpa> b1.xpos = 40 sherpa> b1.ypos = 40 sherpa> b1.ellip = 0.3 sherpa> b1.theta = 5 sherpa> b1.ampl = 3.0 sherpa> b1.alpha = 1.5 sherpa> thaw(b1.ellip, b1.theta) sherpa> freeze(emap.ampl) sherpa> show_model() Model: 1 (beta2d.b1 * tablemodel.emap) Param Type Value Min Max Units ----- ---- ----- --- --- ----- b1.r0 thawed 30 1.17549e-38 3.40282e+38 b1.xpos thawed 40 -3.40282e+38 3.40282e+38 b1.ypos thawed 40 -3.40282e+38 3.40282e+38 b1.ellip thawed 0.3 0 0.999 b1.theta thawed 5 0 6.28319 radians b1.ampl thawed 3 -3.40282e+38 3.40282e+38 b1.alpha thawed 1.5 -10 10 emap.ampl frozen 1 -3.40282e+38 3.40282e+38
Next, we fit the model to the data. By default, Sherpa uses Chi2Gehrels as the fit statistic and LevMar as the fit optimization method.
sherpa> fit() Dataset = 1 Method = levmar Statistic = chi2gehrels Initial fit statistic = 4.88095e+06 Final fit statistic = 3255.75 at function evaluation 65 Data points = 6400 Degrees of freedom = 6393 Probability [Q-value] = 1 Reduced statistic = 0.509268 Change in statistic = 4.8777e+06 b1.r0 12.4625 b1.xpos 39.5139 b1.ypos 40.8959 b1.ellip 0.02592 b1.theta 4.72827 b1.ampl 1.31312 b1.alpha 1.66642
To display the fit and residuals of the plot, we use image_fit and image_resid; the former opens in DS9 a display of the the data image, model image, and fit image, and the latter the (data - model) fit residuals image.
sherpa> image_fit() sherpa> image_resid()
These commands create Figure 2 and Figure 3.
![[DS9 display of data image, model image, and fit image]](2.png)
![[Print media version: DS9 display of data image, model image, and fit image]](2.png)
Figure 2: Data, model, and fit images
DS9 display of data image, model image, and fit image.
![[DS9 display of fit residuals image]](3.png)
![[Print media version: DS9 display of fit residuals image]](3.png)
Figure 3: Fit residuals image
DS9 display of the (data-model) fit residuals image.
Saving a Sherpa Session
To save the Sherpa session:
sherpa> save("expmap.save")
where expmap.save is the output binary file. The restore() command will restore the session when desired.
Scripting It
The file fit.py is a Python script which performs the primary commands used above; it can be executed by typing execfile("fit.py") on the Sherpa command line.
The Sherpa script command may be used to save everything typed on the command line in a Sherpa session:
sherpa> script(filename="sherpa.log", clobber=False)
The CXC is committed to helping Sherpa users transition to new syntax as smoothly as possible. If you have existing Sherpa scripts or save files, submit them to us via the CXC Helpdesk and we will provide the CIAO/Sherpa 4.1 syntax to you.
Summary
This thread is complete, so we can exit the Sherpa session:
sherpa> quit
History
| 14 Jan 2005 | reviewed for CIAO 3.2: no changes |
| 21 Dec 2005 | reviewed for CIAO 3.3: no changes |
| 01 Dec 2006 | reviewed for CIAO 3.4: no changes |
| 07 Dec 2008 | updated for Sherpa 4.1 |
| 29 Apr 2009 | new script command is available with CIAO 4.1.2 |
![[Contour plot of image data]](1.png)
