2013
DOI: 10.1016/j.ecolind.2013.05.007
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Evaluating the performance of multiple remote sensing indices to predict the spatial variability of ecosystem structure and functioning in Patagonian steppes

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Cited by 86 publications
(74 citation statements)
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References 56 publications
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“…A better result was achieved for the total vegetative ground cover model, where 80.2% of the variance could be explained (Table 2f), a result similar to other studies in arid, respectively mountainous, regions, e.g., [5,47].…”
Section: Model Evaluationsupporting
confidence: 74%
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“…A better result was achieved for the total vegetative ground cover model, where 80.2% of the variance could be explained (Table 2f), a result similar to other studies in arid, respectively mountainous, regions, e.g., [5,47].…”
Section: Model Evaluationsupporting
confidence: 74%
“…This is in contrast to other studies [47] and demonstrates the usefulness of this variable for remote sensing vegetation studies in arid lands. Among the single-band reflectances, only Band 5 reflectance (IR) significantly contributed to the model accuracies.…”
Section: Discussioncontrasting
confidence: 53%
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“…LFA infiltration and nutrient cycling indexes have been observed to relate significantly to perennial species richness in Mediterranean drylands (Maestre and Cortina, 2004). In addition, some of the LFA indices, especially infiltration and nutrient cycling, show good correlations with remote sensing indices such as the NDVI (Gaitán et al, 2013). The combination of these two approaches at such different scales may provide useful information on ecosystem functioning and might be a good tool for dryland management by selecting and prioritizing areas to restore.…”
Section: Functional Approaches In the Monitoring Of Dryland Ecosystemmentioning
confidence: 99%
“…The prevalent MODfrm includes linear, polynomial, power, logarithmic, and exponential function forms (Gao et al, 2013a;Jin et al, 2014;Yang et al, 2009). These regression models have performed well in Sahel of Africa (Tucker et al, 1985), Patagonia of Argentina (Gaitan et al, 2013), Colombia (Anaya et al, 2009), and China (Jin et al, 2014). Furthermore, a considerable amount of uncertainties remain in model parameters such as the ratios of root and shoot (R/S) (Wang et al, 2010;Yang et al, 2010).…”
Section: Introductionmentioning
confidence: 99%