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Journal ArticleDOI

Hyperspectral remote sensing for estimating aboveground biomass and for exploring species richness patterns of grassland habitats

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TLDR
In this article, the potential of hyperspectral remote sensing for mapping aboveground biomass in grassland habitats along a dry-mesic gradient, independent of a specific type or phenological period, was explored.
Abstract
Dry grassland sites are amongst the most species-rich habitats of central Europe and it is necessary to design effective management schemes for monitoring of their biomass production. This study explored the potential of hyperspectral remote sensing for mapping aboveground biomass in grassland habitats along a dry-mesic gradient, independent of a specific type or phenological period. Statistical models were developed between biomass samples and spectral reflectance collected with a field spectroradiometer, and it was further investigated to what degree the calibrated biomass models could be scaled to Hyperion data. Furthermore, biomass prediction was used as a surrogate for productivity for grassland habitats and the relationship between biomass and plant species richness was explored. Grassland samples were collected at four time steps during the growing season to capture normally occurring variation due to canopy growth stage and management factors. The relationships were investigated between biomass and 1 existing broad-and narrowband vegetation indices, 2 narrowband normalized difference vegetation index NDVI type indices, and 3 multiple linear regression MLR with individual spectral bands. Best models were obtained from the MLR and narrowband NDVI-type indices. Spectral regions related to plant water content were identified as the best estimators of biomass. Models calibrated with narrowband NDVI indices were best for up-scaling the field-developed models to the Hyperion scene. Furthermore, promising results were obtained from linking biomass estimations from the Hyperion scene with plant species richness of grassland habitats. Overall, it is concluded that ratio-based NDVI-type indices are less prone to scaling errors and thus offer higher potential for mapping grassland biomass using hyperspectral data from space-borne sensors.

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Journal ArticleDOI

Subset Selection in Regression

TL;DR: Chapman and Miller as mentioned in this paper, Subset Selection in Regression (Monographs on Statistics and Applied Probability, no. 40, 1990) and Section 5.8.
Journal ArticleDOI

Unmanned Aerial Vehicle for Remote Sensing Applications—A Review

TL;DR: This paper performs a critical review on RS tasks that involve UAV data and their derived products as their main sources including raw perspective images, digital surface models, and orthophotos and focuses on solutions that address the “new” aspects of the U drone data including ultra-high resolution; availability of coherent geometric and spectral data; and capability of simultaneously using multi-sensor data for fusion.
Journal ArticleDOI

Satellite remote sensing of grasslands: from observation to management

TL;DR: In this article, the authors reviewed the current status of grassland monitoring/observation methods and applications based on satellite remote sensing data, and identified the key remaining challenges and some new upcoming trends for future development.
Journal ArticleDOI

Above ground biomass estimation in an African tropical forest with lidar and hyperspectral data

TL;DR: In this paper, a Partial Least Square Regression (PLSR) was adopted to cope with multiple inputs and multicollinearity issues; the Variable of Importance in the Projection was calculated to evaluate importance of individual predictors for biomass.
References
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Book

Remote Sensing of the Environment: An Earth Resource Perspective

TL;DR: In situ Spectral Reflectance Measurement (new) as mentioned in this paper was used for remote sensing of the environment and vegetation in the urban landscape of the United States, where it has been shown to be useful in soil, minerals, and geomorphology.
Journal ArticleDOI

Hyperspectral vegetation indices and novel algorithms for predicting green LAI of crop canopies: Modeling and validation in the context of precision agriculture

TL;DR: In this paper, a method for minimizing the effect of leaf chlorophyll content on the prediction of green LAI was presented, and new algorithms that adequately predict the LAI of crop canopies.
Book

Statistical Computing: An Introduction to Data Analysis using S-Plus

TL;DR: In this paper, the authors present a set of statistical models in S Plus, including the normal distribution, the central tendency, and the variance component analysis, as well as several other types of models.
Book

Subset Selection in Regression

TL;DR: In this paper, Efroymson's algorithm was used to replace two variables at a time with all subsets using branch-and-bound techniques. But the results showed that one subset was better than another.
Journal ArticleDOI

What is the observed relationship between species richness and productivity

TL;DR: The relationship between species richness and productivity has been extensively studied in the literature as discussed by the authors, with a focus on positive, negative, or curvilinear relationships between productivity and species diversity.
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