Title of article :
Construction of synthetic spectral reflectance of remotely sensed
imagery for planning purposes
Author/Authors :
Tal Feingersh*، نويسنده , , Eyal Ben-Dor، نويسنده , , Juval Portugali، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2007
Abstract :
Urban and environment development plans commonly lack spectrally based value-added information layers such as expected albedo, emissivity
and temperature of the planned landscapes. These can be integrated into plans in order to assist in using specific materials or in the way
new landscapes and urban spaces are designed. In contrast to existing space-borne remotely sensed imagery from which information layers as
such can be extracted using atmospheric correction tools, development plans are set on paper, in a geographic information system (GIS) or as
perspective ‘‘artistic images’’ at best. This paper describes a new software tool within the environment for visualization of images (ENVI 4.1)
software, for automatic simulation of such multispectral reflectance images, given thematic maps of planned landscapes and associated spectral
signatures.
We discuss issues related to the image generation process, the method of spectral signature integration, and to quality assessment measures.
An example is provided.We assess the simulated output quantitatively using a pixel-based ‘‘goodness-of-fit’’ measure and by calculating Pearson’s
correlation coefficients. Results show that simulation of images based on local neighborhood spectral mixtures, have all, mean total-goodness-offit
measures amounting 99%, and have a general positive linear correlation of around 0.86 with real data. A class-wise correlation of a simulated
image with a real reference image shows that large image segments of homogenous land-cover classes, such as vegetation classes, inland waters
and some soils, match about 80e90% of corresponding real data. On the other hand, simulated data will match only 20e40% of real values for
highly textured land-cover classes with relatively small spatial extent over the image, such as for built-up areas.We conclude with two prospective
applications related to the validation of classification algorithms, and to planning exercises.
Keywords :
image simulation , Spectral mixing , Planning , Value adding
Journal title :
Environmental Modelling and Software
Journal title :
Environmental Modelling and Software