Thanks Rick. I can usually spot clouds and haze without much problem in LRGB subs, because they tend to shift the vignetting pattern. But I find it much harder in NB subs. Vignetting patterns don't shift, they just have brighter backgrounds.
Back to the original point on accuracy. I just compared ImageIntegration with noise evaluation weightings vs. all weights=1. Below are the reports from process explorer. As expected, the noise-weighted stack has higher noise reduction from both the reference and the median. But, if I understand correctly, it has higher gaussian noise. How can it have both higher noise reduction and higher noise? I've been following Jordi Gallego's walkthrough on integration techniques (
http://www.astrosurf.com/jordigallego/articles/Image_integration_JGallego.ppt), so I think I'm doing it right. To my eye, the STF-d results are identical, but these results are so similar that I doubt I'd be able to see the difference.
Noise weighted:
Total : 845927 0.518% ( 46866 + 799061 = 0.029% + 0.489%)
Gaussian noise estimates : 1.2566e-04
Scale estimates : 1.8514e-04
Location estimates : 1.7677e-03
SNR estimates : 8.0826e+02
Reference noise reduction : 1.4495
Median noise reduction : 1.6147
Unweighted:
Total : 845927 0.518% ( 46866 + 799061 = 0.029% + 0.489%)
Gaussian noise estimates : 1.2532e-04
Scale estimates : 1.6704e-04
Location estimates : 1.7601e-03
SNR estimates : 8.1228e+02
Reference noise reduction : 1.3112
Median noise reduction : 1.4608