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This set of jupyter notebooks is designed to work with the file example1.fits which is assumed to be in this directory. You can run them by initialising the LSST code, then ipython jupyter & Start by looking at Image Processing.ipynb which runs through processing a single image using the LSST codebase; there are (of course) command line scripts that wrap this up in a reasonably nice interface. Jim Bosch will introduce you to them later. If you want to know more about the `Exposure' object that we use to represent the image look at Exposures.ipynb The deblender isn't especially interesting for this shallow data (30s on the 8.2m Subaru telescope), but if you want to see what it does look at Deblender.ipynb -=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=- The remaining notebooks illustrate ways to fiddle with configurations. The default PSF estimation uses a not-very-good version of the PCA code that I wrote for SDSS. Running PSF.ipynb explores how well this works, and shows what happens if we switch to using PSFex as the back-end. -=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=- The Tune Detection.ipynb notebook fiddles a bit with the detection algorithms; changing the thresholds, and enabling a feature that aggessively over-subtracts bright objects while detecting (which suppresses small things near big ones) -=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=-=- For reasons that I don't understand the Kron code isn't distributed as part of the standard LSST stack (we'll fix this), but this provides the opportunity to illustrate the LSST plugin architecture. To use the Kron code you'll have to clone code from github and build it: Initialise the LSST code, then: git clone [email protected]:lsst/meas_extensions_photometryKron setup -r . -j scons -Q opt=3 -j 4 then restart your jupyter server. Then run the Kron.ipynb notebook.
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Notebooks for the LSST@Europe 2016 meeting in Belgrade
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