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Journal of Automation and Information Sciences

Erscheint 12 Ausgaben pro Jahr

ISSN Druckformat: 1064-2315

ISSN Online: 2163-9337

SJR: 0.173 SNIP: 0.588 CiteScore™:: 2

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The Use of Geometrical Methods in Multispectral Image Processing

Volumen 35, Ausgabe 12, 2003, 8 pages
DOI: 10.1615/JAutomatInfScien.v35.i12.10
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ABSTRAKT

The information geometric model of multispectral images whose individual components are obtained in different spectral ranges of carrier radiation of video information at non-dotty correspondence of the object and the image caused by diffraction phenomena has been proposed. The proposed techniques allows one to restore position parameters of forming and wavelength of a spectral range for the fixation of analyzed image. The new combined invariants allow one to identify objects in a fuzzy scene without restoring or filtration.

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