We introduce a methodology for separating reflective layers of clouds in Earth remote sensing images. We propose a single-channel layer separation framework and extend it to multispectral layer separation. Efficient alternating minimization and fast operator-splitting methods are used to solve minimization problems. Specifically, we apply our methodology to separate strongly stratified and optically thin upper (cirrus) clouds from optically thick lower convective (cumulus) clouds in atmospheric imagery approximated as additive contributions to the observed signal. After setting up synthetic “truth” scenarios, we evaluate the accuracy of the two-layer separation results while varying the effective opaqueness of each of two types of cloud. We show that multispectral cloud layer separation is consistently more accurate than channel-by-channel cloud layer separation.
Separation of a Cirrus Layer and Broken Cumulus Clouds in Multispectral Images
Yanovsky, ., and A.B. Davis (2015), Separation of a Cirrus Layer and Broken Cumulus Clouds in Multispectral Images, IEEE Trans. Geosci. Remote Sens., 53, 2275-2285, doi:10.1109/TGRS.2014.2352319.
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Research Program
Radiation Science Program (RSP)
Mission
Terra- MISR
Funding Sources
ESTO/AIST