Beta diversity represents a powerful indicator of ecological conditions because of its intrinsic relation with environmental gradients. In this view, remote sensing may be profitably used to derive models characterizing or estimating species turnover over an area. While several examples exist using spectral variability to estimate species diversity at several spatial scales, most of these have relied on standard correlation or regression approaches like the common Ordinary Least Square (OLS) regression which are problematic with noisy data. Moreover, very few attempts were made to derive beta diversity characterization models at different taxonomic ranks. In this paper, we performed quantile regression to test if spectral distance represents a good proxy of beta diversity considering different data thresholds and taxonomic ranks. We used plant distribution data from the North and South Carolina including 146 counties and covering a variety of vegetation formations. The dissimilarity in species composition at different taxonomic ranks (using Sorensen distance) among pairs of counties was compared with their distance in NDVI values derived from 23 yearly MODIS images. Our results indicate that (i) spectral variability represents a good proxy of beta diversity when appropriate statistics are applied and (ii) a lower taxonomic rank is important when changes in species composition are examined spatially using remotely sensed data. (C) 2009 Elsevier B.V. All rights reserved. RI Rocchini, Duccio/B-6742-2011

Is spectral distance a proxy of beta diversity at different taxonomic ranks? A test using quantile regression / Rocchini, D.; He, K. S.; Zhang, J.. - In: ECOLOGICAL INFORMATICS. - ISSN 1574-9541. - 4:4(2009), pp. 254-259. [10.1016/j.ecoinf.2009.07.001]

Is spectral distance a proxy of beta diversity at different taxonomic ranks? A test using quantile regression

Rocchini D.;
2009-01-01

Abstract

Beta diversity represents a powerful indicator of ecological conditions because of its intrinsic relation with environmental gradients. In this view, remote sensing may be profitably used to derive models characterizing or estimating species turnover over an area. While several examples exist using spectral variability to estimate species diversity at several spatial scales, most of these have relied on standard correlation or regression approaches like the common Ordinary Least Square (OLS) regression which are problematic with noisy data. Moreover, very few attempts were made to derive beta diversity characterization models at different taxonomic ranks. In this paper, we performed quantile regression to test if spectral distance represents a good proxy of beta diversity considering different data thresholds and taxonomic ranks. We used plant distribution data from the North and South Carolina including 146 counties and covering a variety of vegetation formations. The dissimilarity in species composition at different taxonomic ranks (using Sorensen distance) among pairs of counties was compared with their distance in NDVI values derived from 23 yearly MODIS images. Our results indicate that (i) spectral variability represents a good proxy of beta diversity when appropriate statistics are applied and (ii) a lower taxonomic rank is important when changes in species composition are examined spatially using remotely sensed data. (C) 2009 Elsevier B.V. All rights reserved. RI Rocchini, Duccio/B-6742-2011
2009
4
Rocchini, D.; He, K. S.; Zhang, J.
Is spectral distance a proxy of beta diversity at different taxonomic ranks? A test using quantile regression / Rocchini, D.; He, K. S.; Zhang, J.. - In: ECOLOGICAL INFORMATICS. - ISSN 1574-9541. - 4:4(2009), pp. 254-259. [10.1016/j.ecoinf.2009.07.001]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/198063
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