Non-literal pattern recognition method and system for hyperspect

Image analysis – Pattern recognition – Feature extraction

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382190, 382224, 382225, G06K 946, G06K 962, G06K 966

Patent

active

060758910

ABSTRACT:
A processing system and method identifies materials present in a pixel of a multispectral or a hyperspectral image. Underlying data models representing spectral endmembers or materials of interest and model based relationships are used to identify the materials. The processing system and method provide a technique that detects, unmixes, and classifies spectral signatures for terrain categorization and object identification.

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