Higher Order Moments Generation by Mellin Transform for Compound Models of Clutter

08/16/2008
by   C Bhattacharya, et al.
0

The compound models of clutter statistics are found suitable to describe the nonstationary nature of radar backscattering from high-resolution observations. In this letter, we show that the properties of Mellin transform can be utilized to generate higher order moments of simple and compound models of clutter statistics in a compact manner.

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