6533b872fe1ef96bd12d4089

RESEARCH PRODUCT

Linear spectral mixture modelling to estimate vegetation amount from optical spectral data

Joaquin MeliaMaría Amparo GilabertFrancisco Javier García-haro

subject

EndmemberApplied physicsLinear modelGeneral Earth and Planetary SciencesEnvironmental scienceVegetationSpectral resolutionMixture modelMultispectral ScannerMultispectral pattern recognitionRemote sensing

description

Abstract Spectral mixture modelling has developed in recent years as a suitable remote sensing tool for analysing the biophysical and compositional character of ground surfaces. In this paper the potentiality of the linear spectral mixture model to extract vegetation related parameters from 0·4-2·5 μm reflectance data has been tested. High spectral resolution reflectance measurements of soil-plant mixtures with different soil colour and plant densities were carried out in a laboratory experiment. The constrained least-squares and the factor analysis unmixing procedures were applied to generate endmember fractions of the components present in the mixtures and to test the validity of the model. It is concluded that the derived fraction of the vegetation endmember is less sensitive to soil background than the NDV[. The accuracy attainable by this modelling approach can be considered sufficient for many practical purposes, being operational in the monitoring of vegetation from satellite data.

https://doi.org/10.1080/01431169608949157