I've been going through Jordi's Image Integration presentation powerpoint slides in an effort to see if I can increase the SNR of my noisy images. In it he describes a process of repeating the integration of the registered frames using different rejection algorithms, looking for the one that provides the best SNR. He then takes the viewer through a fine tuning process to find the optimal rejection settings for the selected algorithm.
What I don't get is: in his first example of integrating 15 images, he shows the noise stats for integrating with Sigma, Winsorized Sigma and Linear Fit Clipping algorithms, in which LFC had less Guassian noise from the outset, and a better SNR than the other two choices. Yet, three slides later, he chooses the WSC as his preferred rejection algorithm. Other than one dark pixel being visible in the other three that isn't in the WSC, on what basis did he select that algorithm?
What was the point of the SNR determination if the result it suggests is itself rejected? I understand his approach and his method, but I sure don't understand his conclusion regarding the optimum rejection algorithm.
Jordi is obviously a smart guy, and I'm not questioning his science... so I must have missed something that would explain his decision... but I can't figure out what. Can anyone shed some light on this?
Rod