![Huh? ???](http://pixinsight.com/forum/Smileys/default/huh.gif)
As you wish, Juan, copy of my original message to Wade is below. I've mentioned about FitStacker several times so it's not a big deal.
![Evil >:D](http://pixinsight.com/forum/Smileys/default/evil.gif)
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Hi Wade,
Let me share with you the best kept secret
that will not be really welcomed on public part of PixInsight forum 'cause it will bless other piece of software vs. PixInsight.
![smile :)](http://pixinsight.com/forum/Smileys/default/smile.gif)
Anyway, I really encourage you to download and try FitStacker software written by Ivan Ionov, fellow Russian astroimager. It can be taken here
http://qhy.narod.ru/FITStacker9.zipalso, set of MS Redistributable libraries could be needed if they've not been installed on your Win system, can be downloaded here
http://qhy.narod.ru/vcredist_x86.zipIt performs only image integration, so you should submit set of aligned images (say from PI) to it.
Features that makes it unique and very effective in integration:
1) Dynamic spline interpolation of background for each image - this is what exactly will help you in your fight with gradient due to cirruses;
2) Iterative Sigma clipping with "soft borders" (Sigma Fade parameter in FitStacker) - lead to smoother transition around sigma clipped areas;
3) Integration is optimized to get the best S/N for the sum based on S/N of individual images - it's known that images should be combined with weight ~(S/N)^2 to get the best S/N in the sum.
Download, install and start the FitStacker, after that workflow is pretty straightforward
(see screenshot below for reference or go tho this
link)
1) Press Add... button to select and open images to integrate.
Could be used several times to add images from different folders, etc -> images will be loaded in FitStacker, Merge Parameters dialog will become available (if it is dissapeared for some reason - press Adaptive button). Images should be aligned.
2) (Several) background areas should be choosen to measure Noise and Background.
Use left mouse button + dragging on any image to select the first area, to add other hold Shift and use left mouse button dragging on image again (see screenshot for example). Green boxes will appear on images.
3) (Several) object should be select to measure Signal.
Use Right mouse button to select the first object, hold down Shift + dragging of Right Mouse button to select any additional objects. For comet it makes sense to select single objects, comet's head (see screenshot).
4) You can adjust scale and gamma of image representation, see View group on toolbar. Drag image with mouse and CTRL pressed down. You can scroll through images via button on toolbar or with arrow keys. Delete any image that is REALLY too bad. List will show dialog with measured S/N for all images.
5) Set correct parameters for integration in Merge Parameters dialog (start with ones from screenshot, I underlined everything you have to take care about).
Set "Float" in drop box to the left of Save PNG... button in the toolbar -> in this case the sum will be prepared in Float 32 bit format ready to be saved and then opened in PI.
6) Start integratin with Create button in dialog. And wait! you will see which pixels will be filtered out during the process. While we set 5 iterations in sigma clipping it will take some time to finish the process.
7) As soon as integration will be ended the Save As... dialog will show up (and you will see sum in FitStacker for now). Save the sum.
That's mainly it. The only parameters that really requires some play could be Normalize Area (pix) - it could be made larger for larger images, good rule is just divide X size of your image by 4 or 5 to get the size.
Also, Sigma Clip could be played with a little bit to control the level of "filtering out", higher parameter will lead to less restrictive filtering.
Try it! Sum all frames to get "Synth L", after that you will be able to sum only R, G, and B to get color channels.
Let me know if you will have any questions. FitStacker consistently gives better results than PI in case of limited "difficult" subsets. PI is better on longer homogenious sequences.
All the best,
Yuriy
![](http://album.foto.ru:8080/photos/th/278229/1187480.jpg)