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Generation of brightness and greenness transformations for IRS-LISS II data

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Abstract

A study has been conducted to determine the components of 1RS 1A—LISS-II multispectral data directly related to plant and soil characteristics in the minimum number of features. The first picture taken by LISS—II B camera has been used in this study. After studying the information content and the intrinsic dimensionality of the data the coefficients for brightness and greenness transformations were generated. The intrinsic dimensionality of the IRS data is found to be two.

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Sharma, S.A., Bhatt, H.P. & Ajai Generation of brightness and greenness transformations for IRS-LISS II data. J Ind Soc Remote Sens 18, 25–31 (1990). https://doi.org/10.1007/BF03030730

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