Information analysis of hyperspectral images from the hyperion satellite

被引:0
|
作者
Yu. G. Puzachenko
R. B. Sandlersky
A. N. Krenke
M. Yu. Puzachenko
机构
[1] Russian Academy of Sciences,Severtsov Institute of Ecology and Evolution
[2] Russian Academy of Sciences,Institute of Geography
来源
Doklady Earth Sciences | 2017年 / 475卷
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摘要
A new method of estimating the outgoing radiation spectra data obtained from the Hyperiоn EO-1 satellite is considered. In theoretical terms, this method is based on the nonequilibrium thermodynamics concept with corresponding estimates of the entropy and the Kullbak information. The obtained information estimates make it possible to assess the effective work of the landscape cover both in general and for its various types and to identify the spectrum ranges primarily responsible for the information increment and, accordingly, for the effective work. The information is measured in the frequency band intervals corresponding to the peaks of solar radiation absorption by different pigments, mesophyll, and water to evaluate the system operation by their synthesis and moisture accumulation. This method is assumed to be effective in investigation of ecosystem functioning by hyperspectral remote sensing.
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页码:784 / 787
页数:3
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