Morphological Interpretation of Reflectance Spectrum (MIRS) using libraries looking towards soil classification

The search for tools to perform soil surveying faster and cheaper has led to the development of technological innovations such as remote sensing (RS) and the so-called spectral libraries in recent years. However, there are no studies which collate all the RS background to demonstrate how to use this...

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Main Authors: José Alexandre Melo Demattê, Henrique Bellinaso, Danilo Jefferson Romero, Caio Troula Fongaro
Format: Article
Language:English
Published: Universidade de São Paulo 2014-12-01
Series:Scientia Agricola
Subjects:
Online Access:http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0103-90162014000600010&lng=en&tlng=en
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spelling doaj-7aeecd8117004d00ac0184b9dc63a1c42020-11-24T22:46:30ZengUniversidade de São PauloScientia Agricola1678-992X2014-12-0171650952010.1590/0103-9016-2013-0365S0103-90162014000600010Morphological Interpretation of Reflectance Spectrum (MIRS) using libraries looking towards soil classificationJosé Alexandre Melo Demattê0Henrique Bellinaso1Danilo Jefferson Romero2Caio Troula Fongaro3Universidade de São PauloCoordenadoria de Assistência Técnica IntegralUniversidade de São PauloUniversidade de São PauloThe search for tools to perform soil surveying faster and cheaper has led to the development of technological innovations such as remote sensing (RS) and the so-called spectral libraries in recent years. However, there are no studies which collate all the RS background to demonstrate how to use this technology for soil classification. The present study aims to describe a simple method of how to classify soils by the morphology of spectra associated with a quantitative view (400-2,500 nm). For this, we constructed three spectral libraries: (i) one for quantitative model performance; (ii) a second to function as the spectral patterns; and (iii) a third to serve as a validation stage. All samples had their chemical and granulometric attributes determined by laboratory analysis and prediction models were created based on soil spectra. The system is based on seven steps summarized as follows: i) interpretation of the spectral curve intensity; ii) observation of the general shape of curves; iii) evaluation of absorption features; iv) comparison of spectral curves between the same profile horizons; v) quantification of soil attributes by spectral library models; vi) comparison of a pre-existent spectral library with unknown profile spectra; vii) most probable soil classification. A soil cannot be classified from one spectral curve alone. The behavior between the horizons of a profile, however, was correlated with its classification. In fact, the validation showed 85 % accuracy between the Morphological Interpretation of Reflectance Spectrum (MIRS) method and the traditional classification, showing the importance and potential of a combination of descriptive and quantitative evaluations.http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0103-90162014000600010&lng=en&tlng=enremote sensingvisible and near infraredspectroscopyspectral descriptionspectrum classification
collection DOAJ
language English
format Article
sources DOAJ
author José Alexandre Melo Demattê
Henrique Bellinaso
Danilo Jefferson Romero
Caio Troula Fongaro
spellingShingle José Alexandre Melo Demattê
Henrique Bellinaso
Danilo Jefferson Romero
Caio Troula Fongaro
Morphological Interpretation of Reflectance Spectrum (MIRS) using libraries looking towards soil classification
Scientia Agricola
remote sensing
visible and near infrared
spectroscopy
spectral description
spectrum classification
author_facet José Alexandre Melo Demattê
Henrique Bellinaso
Danilo Jefferson Romero
Caio Troula Fongaro
author_sort José Alexandre Melo Demattê
title Morphological Interpretation of Reflectance Spectrum (MIRS) using libraries looking towards soil classification
title_short Morphological Interpretation of Reflectance Spectrum (MIRS) using libraries looking towards soil classification
title_full Morphological Interpretation of Reflectance Spectrum (MIRS) using libraries looking towards soil classification
title_fullStr Morphological Interpretation of Reflectance Spectrum (MIRS) using libraries looking towards soil classification
title_full_unstemmed Morphological Interpretation of Reflectance Spectrum (MIRS) using libraries looking towards soil classification
title_sort morphological interpretation of reflectance spectrum (mirs) using libraries looking towards soil classification
publisher Universidade de São Paulo
series Scientia Agricola
issn 1678-992X
publishDate 2014-12-01
description The search for tools to perform soil surveying faster and cheaper has led to the development of technological innovations such as remote sensing (RS) and the so-called spectral libraries in recent years. However, there are no studies which collate all the RS background to demonstrate how to use this technology for soil classification. The present study aims to describe a simple method of how to classify soils by the morphology of spectra associated with a quantitative view (400-2,500 nm). For this, we constructed three spectral libraries: (i) one for quantitative model performance; (ii) a second to function as the spectral patterns; and (iii) a third to serve as a validation stage. All samples had their chemical and granulometric attributes determined by laboratory analysis and prediction models were created based on soil spectra. The system is based on seven steps summarized as follows: i) interpretation of the spectral curve intensity; ii) observation of the general shape of curves; iii) evaluation of absorption features; iv) comparison of spectral curves between the same profile horizons; v) quantification of soil attributes by spectral library models; vi) comparison of a pre-existent spectral library with unknown profile spectra; vii) most probable soil classification. A soil cannot be classified from one spectral curve alone. The behavior between the horizons of a profile, however, was correlated with its classification. In fact, the validation showed 85 % accuracy between the Morphological Interpretation of Reflectance Spectrum (MIRS) method and the traditional classification, showing the importance and potential of a combination of descriptive and quantitative evaluations.
topic remote sensing
visible and near infrared
spectroscopy
spectral description
spectrum classification
url http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0103-90162014000600010&lng=en&tlng=en
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