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Rocchini D, Nowosad J, D’Introno R, Chieffallo L, Bacaro G, Gatti RC, Foody GM, Furrer R, Gábor L, Malavasi M, Marcantonio M, Marchetto E, Moudrý V, Ricotta C, Šímová P, Torresani M, Thouverai E. Scientific maps should reach everyone: The cblindplot R package to let colour blind people visualise spatial patterns. ECOL INFORM 2023. [DOI: 10.1016/j.ecoinf.2023.102045] [Citation(s) in RCA: 0] [Impact Index Per Article: 0] [Reference Citation Analysis] [Track Full Text] [Journal Information] [Subscribe] [Scholar Register] [Indexed: 03/06/2023]
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Double down on remote sensing for biodiversity estimation: a biological mindset. COMMUNITY ECOL 2022. [DOI: 10.1007/s42974-022-00113-7] [Citation(s) in RCA: 0] [Impact Index Per Article: 0] [Reference Citation Analysis] [Abstract] [Track Full Text] [Journal Information] [Subscribe] [Scholar Register] [Indexed: 11/03/2022]
Abstract
AbstractIn the light of unprecedented planetary changes in biodiversity, real-time and accurate ecosystem and biodiversity assessments are becoming increasingly essential for informing policy and sustainable development. Biodiversity monitoring is a challenge, especially for large areas such as entire continents. Nowadays, spaceborne and airborne sensors provide information that incorporate wavelengths that cannot be seen nor imagined with the human eye. This is also now accomplished at unprecedented spatial resolutions, defined by the pixel size of images, achieving less than a meter for some satellite images and just millimeters for airborne imagery. Thanks to different modeling techniques, it is now possible to study functional diversity changes over different spatial and temporal scales. At the heart of this unifying framework are the “spectral species”—sets of pixels with a similar spectral signal—and their variability over space. The aim of this paper is to summarize the power of remote sensing for directly estimating plant species diversity, particularly focusing on the spectral species concept.
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Rocchini D, Santos MJ, Ustin SL, Féret J, Asner GP, Beierkuhnlein C, Dalponte M, Feilhauer H, Foody GM, Geller GN, Gillespie TW, He KS, Kleijn D, Leitão PJ, Malavasi M, Moudrý V, Müllerová J, Nagendra H, Normand S, Ricotta C, Schaepman ME, Schmidtlein S, Skidmore AK, Šímová P, Torresani M, Townsend PA, Turner W, Vihervaara P, Wegmann M, Lenoir J. The Spectral Species Concept in Living Color. JOURNAL OF GEOPHYSICAL RESEARCH. BIOGEOSCIENCES 2022; 127:e2022JG007026. [PMID: 36247363 PMCID: PMC9539608 DOI: 10.1029/2022jg007026] [Citation(s) in RCA: 6] [Impact Index Per Article: 3.0] [Reference Citation Analysis] [Abstract] [Key Words] [Grants] [Track Full Text] [Download PDF] [Figures] [Subscribe] [Scholar Register] [Received: 06/06/2022] [Revised: 07/27/2022] [Accepted: 08/02/2022] [Indexed: 06/16/2023]
Abstract
Biodiversity monitoring is an almost inconceivable challenge at the scale of the entire Earth. The current (and soon to be flown) generation of spaceborne and airborne optical sensors (i.e., imaging spectrometers) can collect detailed information at unprecedented spatial, temporal, and spectral resolutions. These new data streams are preceded by a revolution in modeling and analytics that can utilize the richness of these datasets to measure a wide range of plant traits, community composition, and ecosystem functions. At the heart of this framework for monitoring plant biodiversity is the idea of remotely identifying species by making use of the 'spectral species' concept. In theory, the spectral species concept can be defined as a species characterized by a unique spectral signature and thus remotely detectable within pixel units of a spectral image. In reality, depending on spatial resolution, pixels may contain several species which renders species-specific assignment of spectral information more challenging. The aim of this paper is to review the spectral species concept and relate it to underlying ecological principles, while also discussing the complexities, challenges and opportunities to apply this concept given current and future scientific advances in remote sensing.
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Affiliation(s)
- Duccio Rocchini
- BIOME Lab, Department of Biological, Geological and Environmental SciencesAlma Mater Studiorum University of BolognaBolognaItaly
- Department of Spatial SciencesCzech University of Life Sciences PragueFaculty of Environmental SciencesPrahaCzech Republic
| | - Maria J. Santos
- Department of GeographyUniversity of ZurichZurichSwitzerland
| | - Susan L. Ustin
- Department of Land, Air, and Water ResourcesUniversity of California DavisDavisCAUSA
| | - Jean‐Baptiste Féret
- UMR‐TETISIRSTEA Montpellier, Maison de la TélédétectionMontpellier Cedex 5France
| | - Gregory P. Asner
- Center for Global Discovery and Conservation ScienceArizona State UniversityTempeAZUSA
| | | | - Michele Dalponte
- Sustainable Ecosystems and Bioresources Department, Research and Innovation CentreFondazione Edmund MachSan Michele all’AdigeItaly
| | - Hannes Feilhauer
- Remote Sensing Center for Earth System ResearchUniversity of LeipzigLeipzigGermany
| | - Giles M. Foody
- School of GeographyUniversity of NottinghamUniversity ParkNottinghamUK
| | - Gary N. Geller
- NASA Jet Propulsion LaboratoryCalifornia Institute of TechnologyPasadenaCAUSA
| | | | - Kate S. He
- Department of Biological SciencesMurray State UniversityMurrayKYUSA
| | - David Kleijn
- Plant Ecology and Nature Conservation GroupWageningen UniversityWageningenThe Netherlands
| | - Pedro J. Leitão
- Department Landscape Ecology and Environmental System AnalysisTechnische Universität BraunschweigBraunschweigGermany
- Geography DepartmentHumboldt‐Universität zu BerlinBerlinGermany
| | - Marco Malavasi
- Department of Spatial SciencesCzech University of Life Sciences PragueFaculty of Environmental SciencesPrahaCzech Republic
- Department of Chemistry, Physics, Mathematics and Natural SciencesUniversity of SassariSassariItaly
| | - Vítězslav Moudrý
- Department of Spatial SciencesCzech University of Life Sciences PragueFaculty of Environmental SciencesPrahaCzech Republic
| | - Jana Müllerová
- Department of GIS and Remote SensingInstitute of BotanyThe Czech Acad. SciencesPrůhoniceCzech Republic
| | - Harini Nagendra
- Azim Premji UniversityPES Institute of Technology CampusBangaloreIndia
| | - Signe Normand
- Department of Biology, Ecoinformatics and BiodiversityAarhus UniversityAarhus CDenmark
- Center for Biodiversity Dynamics in a Changing World (BIOCHANGE)Department of BiologyAarhus UniversityAarhus CDenmark
| | - Carlo Ricotta
- Department of Environmental BiologyUniversity of Rome “La Sapienza”RomeItaly
| | - Michael E. Schaepman
- Department of Geography, Remote Sensing LaboratoriesUniversity of ZurichZurichSwitzerland
| | - Sebastian Schmidtlein
- Institute of Geography and GeoecologyKarlsruhe Institute of TechnologyKarlsruheGermany
| | - Andrew K. Skidmore
- Faculty of Geo‐Information Science and Earth Observation (ITC)University of TwenteEnschedeThe Netherlands
- Department of Earth and Environmental ScienceMacquarie UniversitySydneyNSWAustralia
| | - Petra Šímová
- Department of Spatial SciencesCzech University of Life Sciences PragueFaculty of Environmental SciencesPrahaCzech Republic
| | - Michele Torresani
- BIOME Lab, Department of Biological, Geological and Environmental SciencesAlma Mater Studiorum University of BolognaBolognaItaly
| | - Philip A. Townsend
- Department of Forest and Wildlife EcologyUniversity of WisconsinMadisonWIUSA
| | - Woody Turner
- Earth Science DivisionNASA HeadquartersWashingtonDCUSA
| | - Petteri Vihervaara
- Natural Environment CentreFinnish Environment Institute (SYKE)HelsinkiFinland
| | - Martin Wegmann
- Department of Remote SensingUniversity of WuerzburgWuerzburgGermany
| | - Jonathan Lenoir
- UMR CNRS 7058 “Ecologie et Dynamique des Systèmes Anthropisés” (EDYSAN)Université de Picardie Jules VerneAmiensFrance
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Spatio–temporal variation of vegetation heterogeneity in groundwater dependent ecosystems within arid environments. ECOL INFORM 2022. [DOI: 10.1016/j.ecoinf.2022.101667] [Citation(s) in RCA: 1] [Impact Index Per Article: 0.5] [Reference Citation Analysis] [Track Full Text] [Journal Information] [Subscribe] [Scholar Register] [Indexed: 11/21/2022]
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Tagliabue G, Boschetti M, Bramati G, Candiani G, Colombo R, Nutini F, Pompilio L, Rivera-Caicedo JP, Rossi M, Rossini M, Verrelst J, Panigada C. Hybrid retrieval of crop traits from multi-temporal PRISMA hyperspectral imagery. ISPRS JOURNAL OF PHOTOGRAMMETRY AND REMOTE SENSING : OFFICIAL PUBLICATION OF THE INTERNATIONAL SOCIETY FOR PHOTOGRAMMETRY AND REMOTE SENSING (ISPRS) 2022; 187:362-377. [PMID: 36093126 PMCID: PMC7613384 DOI: 10.1016/j.isprsjprs.2022.03.014] [Citation(s) in RCA: 8] [Impact Index Per Article: 4.0] [Reference Citation Analysis] [Abstract] [Key Words] [Grants] [Track Full Text] [Subscribe] [Scholar Register] [Indexed: 05/03/2023]
Abstract
The recently launched and upcoming hyperspectral satellite missions, featuring contiguous visible-to-shortwave infrared spectral information, are opening unprecedented opportunities for the retrieval of a broad set of vegetation traits with enhanced accuracy through novel retrieval schemes. In this framework, we exploited hyperspectral data cubes collected by the new-generation PRecursore IperSpettrale della Missione Applicativa (PRISMA) satellite of the Italian Space Agency to develop and test a hybrid retrieval workflow for crop trait mapping. Crop traits were mapped over an agricultural area in north-east Italy (Jolanda di Savoia, FE) using PRISMA images collected during the 2020 and 2021 vegetative seasons. Leaf chlorophyll content, leaf nitrogen content, leaf water content and the corresponding canopy level traits scaled through leaf area index were estimated using a hybrid retrieval scheme based on PROSAIL-PRO radiative transfer simulations coupled with a Gaussian processes regression algorithm. Active learning algorithms were used to optimise the initial set of simulated data by extracting only the most informative samples. The accuracy of the proposed retrieval scheme was evaluated against a broad ground dataset collected in 2020 in correspondence of three PRISMA overpasses. The results obtained were positive for all the investigated variables. At the leaf level, the highest accuracy was obtained for leaf nitrogen content (LNC: r2=0.87, nRMSE=7.5%), while slightly worse results were achieved for leaf chlorophyll content (LCC: r2=0.67, nRMSE=11.7%) and leaf water content (LWC: r2=0.63, nRMSE=17.1%). At the canopy level, a significantly higher accuracy was observed for nitrogen content (CNC: r2=0.92, nRMSE=5.5%) and chlorophyll content (CCC: r2=0.82, nRMSE=10.2%), whereas comparable results were obtained for water content (CWC: r2=0.61, nRMSE=16%). The developed models were additionally tested against an independent dataset collected in 2021 to evaluate their robustness and exportability. The results obtained (i. e., LCC: r2=0.62, nRMSE=27.9%; LNC: r2=0.35, nRMSE=28.4%; LWC: r2=0.74, nRMSE=20.4%; LAI: r2=0.84, nRMSE=14.5%; CCC: r2=0.79, nRMSE=18.5%; CNC: r2=0.62, nRMSE=23.7%; CWC: r2=0.92, nRMSE=16.6%) evidence the transferability of the hybrid approach optimised through active learning for most of the investigated traits. The developed models were then used to map the spatial and temporal variability of the crop traits from the PRISMA images. The high accuracy and consistency of the results demonstrates the potential of spaceborne imaging spectroscopy for crop monitoring, paving the path towards routine retrievals of multiple crop traits over large areas that could drive more effective and sustainable agricultural practices worldwide.
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Affiliation(s)
- Giulia Tagliabue
- Remote Sensing of Environmental Dynamics Laboratory, University of Milano - Bicocca, Milan, Italy
| | - Mirco Boschetti
- Institute for Electromagnetic Sensing of the Environment, National Research Council, Milan, Italy
| | - Gabriele Bramati
- Remote Sensing of Environmental Dynamics Laboratory, University of Milano - Bicocca, Milan, Italy
| | - Gabriele Candiani
- Institute for Electromagnetic Sensing of the Environment, National Research Council, Milan, Italy
| | - Roberto Colombo
- Remote Sensing of Environmental Dynamics Laboratory, University of Milano - Bicocca, Milan, Italy
| | - Francesco Nutini
- Institute for Electromagnetic Sensing of the Environment, National Research Council, Milan, Italy
| | - Loredana Pompilio
- Institute for Electromagnetic Sensing of the Environment, National Research Council, Milan, Italy
| | | | - Marta Rossi
- Remote Sensing of Environmental Dynamics Laboratory, University of Milano - Bicocca, Milan, Italy
| | - Micol Rossini
- Remote Sensing of Environmental Dynamics Laboratory, University of Milano - Bicocca, Milan, Italy
| | - Jochem Verrelst
- Image Processing Laboratory, University of Valencia, Valencia, Spain
| | - Cinzia Panigada
- Remote Sensing of Environmental Dynamics Laboratory, University of Milano - Bicocca, Milan, Italy
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Abstract
Given the significance of national carbon inventories, the importance of large-scale estimates of carbon stocks is increasing. Accurate biomass estimates are essential for tracking changes in the carbon stock through repeated assessment of carbon stock, widely used for both vegetation and soil, to estimate carbon sequestration. Objectives: The aim of our study was to determine the variability of several aspects of the carbon stock value when the input matrix was (1) expressed either as a vector or as a raster; (2) expressed as in local (1:10,000) or regional (1:100,000) scale data; and (3) rasterized with different pixel sizes of 1, 10, 100, and 1000 m. Method: The look-up table method, where expert carbon content values are attached to the mapped landscape matrix. Results: Different formats of input matrix did not show fundamental differences with exceptions of the biggest raster of size 1000 m for the local level. At the regional level, no differences were notable. Conclusions: The results contribute to the specification of best practices for the evaluation of carbon storage as a mitigation measure, as well as the implementation of national carbon inventories.
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Rocchini D, Thouverai E, Marcantonio M, Iannacito M, Da Re D, Torresani M, Bacaro G, Bazzichetto M, Bernardi A, Foody GM, Furrer R, Kleijn D, Larsen S, Lenoir J, Malavasi M, Marchetto E, Messori F, Montaghi A, Moudrý V, Naimi B, Ricotta C, Rossini M, Santi F, Santos MJ, Schaepman ME, Schneider FD, Schuh L, Silvestri S, Ŝímová P, Skidmore AK, Tattoni C, Tordoni E, Vicario S, Zannini P, Wegmann M. rasterdiv-An Information Theory tailored R package for measuring ecosystem heterogeneity from space: To the origin and back. Methods Ecol Evol 2021; 12:1093-1102. [PMID: 34262682 PMCID: PMC8252722 DOI: 10.1111/2041-210x.13583] [Citation(s) in RCA: 11] [Impact Index Per Article: 3.7] [Reference Citation Analysis] [Abstract] [Key Words] [Grants] [Track Full Text] [Download PDF] [Figures] [Journal Information] [Subscribe] [Scholar Register] [Received: 12/13/2020] [Accepted: 02/08/2021] [Indexed: 11/28/2022]
Abstract
Ecosystem heterogeneity has been widely recognized as a key ecological indicator of several ecological functions, diversity patterns and change, metapopulation dynamics, population connectivity or gene flow.In this paper, we present a new R package-rasterdiv-to calculate heterogeneity indices based on remotely sensed data. We also provide an ecological application at the landscape scale and demonstrate its power in revealing potentially hidden heterogeneity patterns.The rasterdiv package allows calculating multiple indices, robustly rooted in Information Theory, and based on reproducible open-source algorithms.
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Affiliation(s)
- Duccio Rocchini
- BIOME Lab, Department of Biological, Geological and Environmental SciencesAlma Mater Studiorum University of BolognaBolognaItaly
- Department of Spatial Sciences, Faculty of Environmental SciencesCzech University of Life Sciences PraguePraha ‐ SuchdolCzech Republic
| | - Elisa Thouverai
- BIOME Lab, Department of Biological, Geological and Environmental SciencesAlma Mater Studiorum University of BolognaBolognaItaly
| | - Matteo Marcantonio
- Department of Pathology, Microbiology, and ImmunologySchool of Veterinary MedicineUniversity of CaliforniaDavisCAUSA
| | | | - Daniele Da Re
- Georges Lemaître Center for Earth and Climate ResearchEarth and Life InstituteUCLouvainLouvain‐la‐NeuveBelgium
| | - Michele Torresani
- Faculty of Science and TechnologyFree University of Bolzano/BozenPiazza Universitá/Universitätsplatz 1BolzanoItaly
| | - Giovanni Bacaro
- Department of Life SciencesUniversity of TriesteTriesteItaly
| | - Manuele Bazzichetto
- EcoBio (Ecosystèmes, Biodiversité, Évolution) ‐ UMR 6553Université de RennesCNRSRennesFrance
| | | | | | - Reinhard Furrer
- Department of MathematicsUniversity of ZurichZurichSwitzerland
- Department of Computational ScienceUniversity of ZurichZurichSwitzerland
| | - David Kleijn
- Plant Ecology and Nature Conservation GroupWageningen UniversityWageningenThe Netherlands
| | - Stefano Larsen
- Unit of Computational BiologyResearch and Innovation CenterFondazione Edmund MachSan Michele all'AdigeItaly
- Department of CivilEnvironmental and Mechanical EngineeringUniversity of TrentoTrentoItaly
| | - Jonathan Lenoir
- UR “Ecologie et Dynamique des Systèmes Anthropisés” (EDYSAN, UMR 7058 CNRS‐UPJV)Université de Picardie Jules VerneAmiensFrance
| | - Marco Malavasi
- Department of Spatial Sciences, Faculty of Environmental SciencesCzech University of Life Sciences PraguePraha ‐ SuchdolCzech Republic
| | - Elisa Marchetto
- BIOME Lab, Department of Biological, Geological and Environmental SciencesAlma Mater Studiorum University of BolognaBolognaItaly
| | - Filippo Messori
- BIOME Lab, Department of Biological, Geological and Environmental SciencesAlma Mater Studiorum University of BolognaBolognaItaly
| | - Alessandro Montaghi
- DAGRI Department of Agriculture, Food, Environment and ForestryUniversity of FlorenceFirenzeItaly
| | - Vítězslav Moudrý
- Department of Spatial Sciences, Faculty of Environmental SciencesCzech University of Life Sciences PraguePraha ‐ SuchdolCzech Republic
| | - Babak Naimi
- Department of Geosciences and GeographyUniversity of HelsinkiHelsinkiFinland
| | - Carlo Ricotta
- Department of Environmental BiologyUniversity of Rome “La Sapienza'”RomeItaly
| | - Micol Rossini
- Remote Sensing of Environmental Dynamics LaboratoryDISATUniversitá degli Studi Milano‐BicoccaMilanoItaly
| | - Francesco Santi
- BIOME Lab, Department of Biological, Geological and Environmental SciencesAlma Mater Studiorum University of BolognaBolognaItaly
| | - Maria J. Santos
- Department of Geography, Earth System ScienceUniversity of ZurichZurichSwitzerland
| | - Michael E. Schaepman
- Department of GeographyRemote Sensing LaboratoriesUniversity of ZurichZurichSwitzerland
| | | | - Leila Schuh
- Department of MathematicsUniversity of ZurichZurichSwitzerland
| | - Sonia Silvestri
- BIOME Lab, Department of Biological, Geological and Environmental SciencesAlma Mater Studiorum University of BolognaBolognaItaly
| | - Petra Ŝímová
- Department of Spatial Sciences, Faculty of Environmental SciencesCzech University of Life Sciences PraguePraha ‐ SuchdolCzech Republic
| | - Andrew K. Skidmore
- Faculty of Geo‐Information Science and Earth Observation (ITC)University of TwenteEnschedeThe Netherlands
- Department of Environmental ScienceMacquarie UniversitySydneyNSWAustralia
| | - Clara Tattoni
- Department of Agriculture, Food, Environment and Forestry (DAGRI)University of FlorenceFirenzeItaly
| | - Enrico Tordoni
- Department of Life SciencesUniversity of TriesteTriesteItaly
| | - Saverio Vicario
- CNR‐IIA C/O Physics Department “M. Merlin” University of BariBariItaly
| | - Piero Zannini
- BIOME Lab, Department of Biological, Geological and Environmental SciencesAlma Mater Studiorum University of BolognaBolognaItaly
| | - Martin Wegmann
- Department of Remote SensingUniversity of WuerzburgWürzburgGermany
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A Remote Sensing Approach to Understanding Patterns of Secondary Succession in Tropical Forest. REMOTE SENSING 2021. [DOI: 10.3390/rs13112148] [Citation(s) in RCA: 3] [Impact Index Per Article: 1.0] [Reference Citation Analysis] [Abstract] [Track Full Text] [Subscribe] [Scholar Register] [Indexed: 01/20/2023]
Abstract
Monitoring biodiversity on a global scale is a major challenge for biodiversity conservation. Field assessments commonly used to assess patterns of biodiversity and habitat condition are costly, challenging, and restricted to small spatial scales. As ecosystems face increasing anthropogenic pressures, it is important that we find ways to assess patterns of biodiversity more efficiently. Remote sensing has the potential to support understanding of landscape-level ecological processes. In this study, we considered cacao agroforests at different stages of secondary succession, and primary forest in the Northern Range of Trinidad, West Indies. We assessed changes in tree biodiversity over succession using both field data, and data derived from remote sensing. We then evaluated the strengths and limitations of each method, exploring the potential for expanding field data by using remote sensing techniques to investigate landscape-level patterns of forest condition and regeneration. Remote sensing and field data provided different insights into tree species compositional changes, and patterns of alpha- and beta-diversity. The results highlight the potential of remote sensing for detecting patterns of compositional change in forests, and for expanding on field data in order to better understand landscape-level patterns of forest diversity.
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Thouverai E, Marcantonio M, Bacaro G, Re DD, Iannacito M, Marchetto E, Ricotta C, Tattoni C, Vicario S, Rocchini D. Measuring diversity from space: a global view of the free and open source rasterdiv R package under a coding perspective. COMMUNITY ECOL 2021. [DOI: 10.1007/s42974-021-00042-x] [Citation(s) in RCA: 3] [Impact Index Per Article: 1.0] [Reference Citation Analysis] [Abstract] [Track Full Text] [Journal Information] [Subscribe] [Scholar Register] [Indexed: 10/21/2022]
Abstract
AbstractThe variation of species diversity over space and time has been widely recognised as a key challenge in ecology. However, measuring species diversity over large areas might be difficult for logistic reasons related to both time and cost savings for sampling, as well as accessibility of remote ecosystems. In this paper, we present a new package - - to calculate diversity indices based on remotely sensed data, by discussing the theory behind the developed algorithms. Obviously, measures of diversity from space should not be viewed as a replacement of in situ data on biological diversity, but they are rather complementary to existing data and approaches. In practice, they integrate available information of Earth surface properties, including aspects of functional (structural, biophysical and biochemical), taxonomic, phylogenetic and genetic diversity. Making use of the package can result useful in making multiple calculations based on reproducible open source algorithms, robustly rooted in Information Theory.
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Rocchini D, Salvatori N, Beierkuhnlein C, Chiarucci A, de Boissieu F, Förster M, Garzon-Lopez CX, Gillespie TW, Hauffe HC, He KS, Kleinschmit B, Lenoir J, Malavasi M, Moudrý V, Nagendra H, Payne D, Šímová P, Torresani M, Wegmann M, Féret JB. From local spectral species to global spectral communities: A benchmark for ecosystem diversity estimate by remote sensing. ECOL INFORM 2021. [DOI: 10.1016/j.ecoinf.2020.101195] [Citation(s) in RCA: 19] [Impact Index Per Article: 6.3] [Reference Citation Analysis] [Track Full Text] [Journal Information] [Subscribe] [Scholar Register] [Indexed: 01/30/2023]
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