Bayesian networks for raster data (BayNeRD): plausible reasoning from observations

This paper describes the basis functioning and implementation of a computer-aided Bayesian Network (BN) method that is able to incorporate experts’ knowledge for the benefit of remote sensing applications and other raster data analyses: Bayesian Network for Raster Data (BayNeRD). Using a case study...

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Main Authors: Mello, Marcio Pupin, Risso, Joel, Atzberger, Clement, Aplin, Paul, Pebesma, Edzer, Vieira, Carlos Antonio Oliveira, Rudorff, Bernardo Friedrich Theodor
Format: Article
Published: MDPI 2013
Online Access:https://eprints.nottingham.ac.uk/3081/
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author Mello, Marcio Pupin
Risso, Joel
Atzberger, Clement
Aplin, Paul
Pebesma, Edzer
Vieira, Carlos Antonio Oliveira
Rudorff, Bernardo Friedrich Theodor
author_facet Mello, Marcio Pupin
Risso, Joel
Atzberger, Clement
Aplin, Paul
Pebesma, Edzer
Vieira, Carlos Antonio Oliveira
Rudorff, Bernardo Friedrich Theodor
author_sort Mello, Marcio Pupin
building Nottingham Research Data Repository
collection Online Access
description This paper describes the basis functioning and implementation of a computer-aided Bayesian Network (BN) method that is able to incorporate experts’ knowledge for the benefit of remote sensing applications and other raster data analyses: Bayesian Network for Raster Data (BayNeRD). Using a case study of soybean mapping in Mato Grosso State, Brazil, BayNeRD was tested to evaluate its capability to support the understanding of a complex phenomenon through plausible reasoning based on data observation. Observations made upon Crop Enhanced Index (CEI) values for the current and previous crop years, soil type, terrain slope, and distance to the nearest road and water body were used to calculate the probability of soybean presence for the entire Mato Grosso State, showing strong adherence to the official data. CEI values were the most influencial variables in the calculated probability of soybean presence, stating the potential of remote sensing as a source of data. Moreover, the overall accuracy of over 91% confirmed the high accuracy of the thematic map derived from the calculated probability values. BayNeRD allows the expert to model the relationship among several observed variables, outputs variable importance information, handles incomplete and disparate forms of data, and offers a basis for plausible reasoning from observations. The BayNeRD algorithm has been implemented in R software and can be found on the internet. \ and
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spelling nottingham-30812020-05-04T16:39:49Z https://eprints.nottingham.ac.uk/3081/ Bayesian networks for raster data (BayNeRD): plausible reasoning from observations Mello, Marcio Pupin Risso, Joel Atzberger, Clement Aplin, Paul Pebesma, Edzer Vieira, Carlos Antonio Oliveira Rudorff, Bernardo Friedrich Theodor This paper describes the basis functioning and implementation of a computer-aided Bayesian Network (BN) method that is able to incorporate experts’ knowledge for the benefit of remote sensing applications and other raster data analyses: Bayesian Network for Raster Data (BayNeRD). Using a case study of soybean mapping in Mato Grosso State, Brazil, BayNeRD was tested to evaluate its capability to support the understanding of a complex phenomenon through plausible reasoning based on data observation. Observations made upon Crop Enhanced Index (CEI) values for the current and previous crop years, soil type, terrain slope, and distance to the nearest road and water body were used to calculate the probability of soybean presence for the entire Mato Grosso State, showing strong adherence to the official data. CEI values were the most influencial variables in the calculated probability of soybean presence, stating the potential of remote sensing as a source of data. Moreover, the overall accuracy of over 91% confirmed the high accuracy of the thematic map derived from the calculated probability values. BayNeRD allows the expert to model the relationship among several observed variables, outputs variable importance information, handles incomplete and disparate forms of data, and offers a basis for plausible reasoning from observations. The BayNeRD algorithm has been implemented in R software and can be found on the internet. \ and MDPI 2013-11-15 Article PeerReviewed Mello, Marcio Pupin, Risso, Joel, Atzberger, Clement, Aplin, Paul, Pebesma, Edzer, Vieira, Carlos Antonio Oliveira and Rudorff, Bernardo Friedrich Theodor (2013) Bayesian networks for raster data (BayNeRD): plausible reasoning from observations. Remote Sensing, 5 (11). pp. 5999-6025. ISSN 2072-4292 http://www.mdpi.com/2072-4292/5/11/5999 doi:10.3390/rs5115999 doi:10.3390/rs5115999
spellingShingle Mello, Marcio Pupin
Risso, Joel
Atzberger, Clement
Aplin, Paul
Pebesma, Edzer
Vieira, Carlos Antonio Oliveira
Rudorff, Bernardo Friedrich Theodor
Bayesian networks for raster data (BayNeRD): plausible reasoning from observations
title Bayesian networks for raster data (BayNeRD): plausible reasoning from observations
title_full Bayesian networks for raster data (BayNeRD): plausible reasoning from observations
title_fullStr Bayesian networks for raster data (BayNeRD): plausible reasoning from observations
title_full_unstemmed Bayesian networks for raster data (BayNeRD): plausible reasoning from observations
title_short Bayesian networks for raster data (BayNeRD): plausible reasoning from observations
title_sort bayesian networks for raster data (baynerd): plausible reasoning from observations
url https://eprints.nottingham.ac.uk/3081/
https://eprints.nottingham.ac.uk/3081/
https://eprints.nottingham.ac.uk/3081/