Background estimation in multispectral imagery

A machine learning framework is employed for estimating the background spectrum at a pixel of interest using pixel values in an annular neighborhood of that pixel. © 2019 The Author(s) OCIS codes: 280.4991, 330.6180, 330.6110

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