Using an Exposure Map in Fitting Image Data
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Sherpa Threads (CIAO 4.17 Sherpa)
Overview
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.
Last Update: 17 Dec 2024 - reviewed for CIAO 4.17, updated returned defined model string formatting.
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
Getting Started
Please follow the Sherpa Getting Started thread.
Reading and Plotting 2-D FITS Data
We are using 2-D spatial data from the FITS data file 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 (Figure 1):
sherpa> contour_data()
Figure 1: Contour plot of the data
![[Contour plot of image data]](contour-data.png)
![[Print media version: Contour plot of image data]](contour-data.png)
Figure 1: Contour plot of the data
Contour plot of image data set created with the contour_data function.
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.
sherpa> set_source(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 -6.28319 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) 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 -6.28319 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. Since the data is Poisson, we switch to the Cash statistic and use the Nelder-Mead optimiser:
sherpa> set_method('neldermead') sherpa> set_stat('cash') sherpa> fit() Dataset = 1 Method = neldermead Statistic = cash Initial fit statistic = 398229 Final fit statistic = -723845 at function evaluation 1499 Data points = 6400 Degrees of freedom = 6393 Change in statistic = 1.12207e+06 b1.r0 12.0514 b1.xpos 39.3166 b1.ypos 40.9343 b1.ellip 0.0193133 b1.theta -1.44989 b1.ampl 1.33832 b1.alpha 1.58933
To display the fit and residuals of the plot, we first try the contour command (Figure 2):
sherpa> contour('fit', 'resid') sherpa> for ax in plt.gcf().axes: ...: ax.set_aspect('equal') ...:
Figure 2: Contour plot: fit and residuals
![[The top plot shows contours around the source (also drawn as contours), and the bottom plot residuals (as contours, which renders the plot hard to read due to the Poisson nature of the data).]](contour-fit-resid.png)
![[Print media version: The top plot shows contours around the source (also drawn as contours), and the bottom plot residuals (as contours, which renders the plot hard to read due to the Poisson nature of the data).]](contour-fit-resid.png)
Figure 2: Contour plot: fit and residuals
The contour plot does not show this data well.
The data can be better viewed in DS9 with the image_fit and image_resid functions. First, image_fit, which displays the data image, model image, and fit image (Figure 3):
sherpa> image_fit()
and the latter the (data - model) fit residuals image (Figure 4):
sherpa> image_resid()
Figure 3: Data, model, and fit images
![[DS9 display of data image, model image, and fit image]](ds9-fit.png)
![[Print media version: DS9 display of data image, model image, and fit image]](ds9-fit.png)
Figure 3: Data, model, and fit images
DS9 display of data image, model image, and fit image.
Figure 4: Fit residuals image
![[DS9 display of fit residuals image]](ds9-resid.png)
![[Print media version: DS9 display of fit residuals image]](ds9-resid.png)
Figure 4: Fit residuals image
DS9 display of the (data-model) fit residuals image.
Saving a Sherpa Session
To save the Sherpa session in order to return to the analysis at a later point:
sherpa> save("expmap.save") sherpa> save_all("expmap.ascii")
where the save function records all the information about the current session to the binary file expmap.save, and the save_all function records the session settings to an editable ASCII file.
To restore the session that was saved to the binary file expmap.save or ASCII file expmap.ascii:
sherpa> restore("expmap.save")
sherpa> %run -i expmap.ascii
Scripting It
The file fit.py is a Python script which performs the primary commands used above; it can be executed by typing %run -i 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)
(Note that restoring a Sherpa session from such a file could be problematic since it may include syntax errors, unwanted fitting trials, et cetera.)
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 |
07 Jan 2010 | updated for CIAO 4.2 |
13 Jul 2010 | updated for CIAO 4.2 Sherpa v2: removal of S-Lang version of thread. |
30 Jan 2012 | reviewed for CIAO 4.4 (no changes) |
13 Dec 2012 | reviewed for CIAO 4.5 (no changes) |
05 Dec 2013 | reviewed for CIAO 4.6: no changes |
18 Mar 2015 | reviewed for CIAO 4.7, updated model parameter boundaries. |
10 Dec 2015 | reviewed for CIAO 4.8, updated screen output |
01 Nov 2016 | reviewed for CIAO 4.9, no content change |
01 Jun 2018 | reviewed for CIAO 4.10, no content change |
12 Dec 2018 | reviewed for CIAO 4.11, no content change |
13 Dec 2019 | Updated for CIAO 4.12: use of Matplotlib rather than ChIPS and switched to a Poisson-based statistic for the fit. |
28 Mar 2022 | reviewed for CIAO 4.14, no content change |
08 Dec 2022 | reviewed for CIAO 4.15, no content change |
04 Dec 2023 | reviewed for CIAO 4.16, no content change |
17 Dec 2024 | reviewed for CIAO 4.17, updated returned defined model string formatting. |