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Metrics based on information entropy applied to evaluate complexity of landscape patterns

Landscape is an ecological category represented by a complex system formed by interactions between society and nature. Spatial patterns of different land uses present in a landscape reveal past and present processes responsible for its dynamics and organisation. Measuring the complexity of these pat...

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Autores principales: de Mattos, Sérgio Henrique Vannucchi Leme, Vicente, Luiz Eduardo, Vicente, Andrea Koga, Júnior, Cláudio Bielenki, Piqueira, José Roberto Castilho
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8775317/
https://www.ncbi.nlm.nih.gov/pubmed/35051225
http://dx.doi.org/10.1371/journal.pone.0262680
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author de Mattos, Sérgio Henrique Vannucchi Leme
Vicente, Luiz Eduardo
Vicente, Andrea Koga
Júnior, Cláudio Bielenki
Piqueira, José Roberto Castilho
author_facet de Mattos, Sérgio Henrique Vannucchi Leme
Vicente, Luiz Eduardo
Vicente, Andrea Koga
Júnior, Cláudio Bielenki
Piqueira, José Roberto Castilho
author_sort de Mattos, Sérgio Henrique Vannucchi Leme
collection PubMed
description Landscape is an ecological category represented by a complex system formed by interactions between society and nature. Spatial patterns of different land uses present in a landscape reveal past and present processes responsible for its dynamics and organisation. Measuring the complexity of these patterns (in the sense of their spatial heterogeneity) allows us to evaluate the integrity and resilience of these complex environmental systems. Here, we show how landscape metrics based on information entropy can be applied to evaluate the complexity (in the sense of spatial heterogeneity) of patches patterns, as well as their transition zones, present in a Cerrado conservation area and its surroundings, located in south-eastern Brazil. The analysis in this study aimed to elucidate how changes in land use and the consequent fragmentation affect the complexity of the landscape. The scripts CompPlex HeROI and CompPlex Janus were created to allow calculation of information entropy (H(e)), variability (H(e)/H(max)), and López-Ruiz, Mancini, and Calbet (LMC) and Shiner, Davison, and Landsberg (SDL) measures. CompPlex HeROI enabled the calculation of these measures for different regions of interest (ROIs) selected in a satellite image of the study area, followed by comparison of the complexity of their patterns, in addition to enabling the generation of complexity signatures for each ROI. CompPlex Janus made it possible to spatialise the results for these four measures in landscape complexity maps. As expected, both for the complexity patterns evaluated by CompPlex HeROI and the complexity maps generated by CompPlex Janus, the areas with vegetation located in a region of intermediate spatial heterogeneity had lower values for the He and He/Hmax measures and higher values for the LMC and SDL measurements. So, these landscape metrics were able to capture the behaviour of the patterns of different types of land use present in the study area, bringing together uses linked to vegetation with increased canopy coverage and differentiating them from urban areas and transition areas that mix different uses. Thus, the algorithms implemented in these scripts were demonstrated to be robust and capable of measuring the variability in information levels from the landscape, not only in terms of spatial datasets but also spectrally. The automation of measurement calculations, owing to informational entropy provided by these scripts, allows a quick assessment of the complexity of patterns present in a landscape, and thus, generates indicators of landscape integrity and resilience.
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spelling pubmed-87753172022-01-21 Metrics based on information entropy applied to evaluate complexity of landscape patterns de Mattos, Sérgio Henrique Vannucchi Leme Vicente, Luiz Eduardo Vicente, Andrea Koga Júnior, Cláudio Bielenki Piqueira, José Roberto Castilho PLoS One Research Article Landscape is an ecological category represented by a complex system formed by interactions between society and nature. Spatial patterns of different land uses present in a landscape reveal past and present processes responsible for its dynamics and organisation. Measuring the complexity of these patterns (in the sense of their spatial heterogeneity) allows us to evaluate the integrity and resilience of these complex environmental systems. Here, we show how landscape metrics based on information entropy can be applied to evaluate the complexity (in the sense of spatial heterogeneity) of patches patterns, as well as their transition zones, present in a Cerrado conservation area and its surroundings, located in south-eastern Brazil. The analysis in this study aimed to elucidate how changes in land use and the consequent fragmentation affect the complexity of the landscape. The scripts CompPlex HeROI and CompPlex Janus were created to allow calculation of information entropy (H(e)), variability (H(e)/H(max)), and López-Ruiz, Mancini, and Calbet (LMC) and Shiner, Davison, and Landsberg (SDL) measures. CompPlex HeROI enabled the calculation of these measures for different regions of interest (ROIs) selected in a satellite image of the study area, followed by comparison of the complexity of their patterns, in addition to enabling the generation of complexity signatures for each ROI. CompPlex Janus made it possible to spatialise the results for these four measures in landscape complexity maps. As expected, both for the complexity patterns evaluated by CompPlex HeROI and the complexity maps generated by CompPlex Janus, the areas with vegetation located in a region of intermediate spatial heterogeneity had lower values for the He and He/Hmax measures and higher values for the LMC and SDL measurements. So, these landscape metrics were able to capture the behaviour of the patterns of different types of land use present in the study area, bringing together uses linked to vegetation with increased canopy coverage and differentiating them from urban areas and transition areas that mix different uses. Thus, the algorithms implemented in these scripts were demonstrated to be robust and capable of measuring the variability in information levels from the landscape, not only in terms of spatial datasets but also spectrally. The automation of measurement calculations, owing to informational entropy provided by these scripts, allows a quick assessment of the complexity of patterns present in a landscape, and thus, generates indicators of landscape integrity and resilience. Public Library of Science 2022-01-20 /pmc/articles/PMC8775317/ /pubmed/35051225 http://dx.doi.org/10.1371/journal.pone.0262680 Text en © 2022 Mattos et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
de Mattos, Sérgio Henrique Vannucchi Leme
Vicente, Luiz Eduardo
Vicente, Andrea Koga
Júnior, Cláudio Bielenki
Piqueira, José Roberto Castilho
Metrics based on information entropy applied to evaluate complexity of landscape patterns
title Metrics based on information entropy applied to evaluate complexity of landscape patterns
title_full Metrics based on information entropy applied to evaluate complexity of landscape patterns
title_fullStr Metrics based on information entropy applied to evaluate complexity of landscape patterns
title_full_unstemmed Metrics based on information entropy applied to evaluate complexity of landscape patterns
title_short Metrics based on information entropy applied to evaluate complexity of landscape patterns
title_sort metrics based on information entropy applied to evaluate complexity of landscape patterns
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8775317/
https://www.ncbi.nlm.nih.gov/pubmed/35051225
http://dx.doi.org/10.1371/journal.pone.0262680
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