Hi
While having my customary PI discussion on another forum a fellow member posed the following
Harry, here is the bit that concerned me;
http://pixinsight.com/doc/tools/ImageIn ... ation.html, para 14
Averaged Sigma Clipping
Our implementation of averaged sigma clipping is a variant of the similar algorithm (AVSIGCLIP) from the imcombine task of IRAF. This algorithm works in two phases. In the first phase, the gain of an ideal detector with zero readout noise is estimated for each pixel stack. The second phase is an iterative sigma clipping procedure, where the estimated gains are used to compute the dispersion (sigma) of each pixel stack around the median.
Dispersion is calculated based on Poisson statistics, under the assumption that the noise in the images is proportional to the square root of the mean pixel values:
(my quotes).
We are dealing here with sets of finite data as in combining frames pixel by pixel. Apart from the fact that the author mixes terms (calling standard deviation 'dispersion'). It has long been understood that such numbers are dealt with using Gaussian statistics. To use Poisson statistics (as it says above 'under the assumption') is wrong. There is no random time element involved here, just a set of numbers. It sounds like splitting hairs but either you do your maths right or you don't.
Dennis
Bit past my pay grade , so any thoughts
Regards Harry