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Characterisation of forestry species - a comparison using singular value decomposition (SVD) and artificial neural networks (ANN)

Characterisation of forestry species - a comparison using singular value decomposition (SVD) and artificial neural networks (ANN)

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Inspec keywords: neural nets; remote sensing; geophysical techniques; image classification; geophysical signal processing; adaptive signal processing; forestry; singular value decomposition; backpropagation

Subjects: Optical information, image and video signal processing; Agriculture; Linear algebra (numerical analysis); Computer vision and image processing techniques; Neural computing techniques; Geography and cartography computing; Neural nets; Other topics in solid Earth physics; Geophysics computing; Data and information; acquisition, processing, storage and dissemination in geophysics; Other topics in Earth sciences; Pattern recognition; Instrumentation and techniques for geophysical, hydrospheric and lower atmosphere research; Linear algebra (numerical analysis)

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