Benjamin Leutner
University of Würzburg
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Featured researches published by Benjamin Leutner.
Remote Sensing | 2012
Benjamin Leutner; Björn Reineking; Jörg Müller; Martin Bachmann; Carl Beierkuhnlein; Stefan Dech; Martin Wegmann
The decline of biodiversity is one of the major current global issues. Still, there is a widespread lack of information about the spatial distribution of individual species and biodiversity as a whole. Remote sensing techniques are increasingly used for biodiversity monitoring and especially the combination of LiDAR and hyperspectral data is expected to deliver valuable information. In this study spatial patterns of vascular plant community composition and α-diversity of a temperate montane forest in Germany were analysed for different forest strata. The predictive power of LiDAR (LiD) and hyperspectral (MNF) datasets alone and combined (MNF+LiD) was compared using random forest regression in a ten-fold cross-validation scheme that included feature selection and model tuning. The final models were used for spatial predictions. Species richness could be predicted with varying accuracy (R2 = 0.26 to 0.55) depending on the forest layer. In contrast, community composition of the different layers, obtained by multivariate ordination, could in part be modelled with high accuracies for the first ordination axis (R2 = 0.39 to 0.78), but poor accuracies for the second axis (R2 ≤ 0.3). LiDAR variables were the best predictors for total species richness across all forest layers (R2 LiD = 0.3, R2 MNF = 0.08, R2 MNF+LiD = 0.2), while for community composition across all forest layers both hyperspectral and LiDAR predictors achieved similar performances (R2 LiD = 0.75, R2 MNF = 0.76, R2 MNF+LiD = 0.78). The improvement in R2 was small (≤0.07)—if any—when using both LiDAR and hyperspectral data as compared to using only the best single predictor set. This study shows the high potential of LiDAR and hyperspectral data for plant biodiversity modelling, but also calls for a critical evaluation of the added value of combining both with respect to acquisition costs.
Philosophical Transactions of the Royal Society B | 2014
Martin Wegmann; Luca Santini; Benjamin Leutner; Kamran Safi; Duccio Rocchini; Mirijana Bevanda; Hooman Latifi; Stefan Dech; Carlo Rondinini
The African protected area (PA) network has the potential to act as a set of functionally interconnected patches that conserve meta-populations of mammal species, but individual PAs are vulnerable to habitat change which may disrupt connectivity and increase extinction risk. Individual PAs have different roles in maintaining connectivity, depending on their size and location. We measured their contribution to network connectivity (irreplaceability) for carnivores and ungulates and combined it with a measure of vulnerability based on a 30-year trend in remotely sensed vegetation cover (Normalized Difference Vegetation Index). Highly irreplaceable PAs occurred mainly in southern and eastern Africa. Vegetation cover change was generally faster outside than inside PAs and particularly so in southern Africa. The extent of change increased with the distance from PAs. About 5% of highly irreplaceable PAs experienced a faster vegetation cover loss than their surroundings, thus requiring particular conservation attention. Our analysis identified PAs at risk whose isolation would disrupt the connectivity of the PA network for large mammals. This is an example of how ecological spatial modelling can be combined with large-scale remote sensing data to investigate how land cover change may affect ecological processes and species conservation.
Acta Geophysica | 2015
W.J. Timmermans; Christiaan van der Tol; J. Timmermans; Murat Ucer; Xuelong Chen; Luis Alonso; J. Moreno; Arnaud Carrara; Ramón Maañón López; Fernando de la Cruz Tercero; Horacio L. Corcoles; Eduardo de Miguel; José Antonio Godé Sánchez; Irene Pérez; Belen Franch; Juan-Carlos J. Munoz; Drazen Skokovic; José A. Sobrino; Guillem Sòria; Alasdair MacArthur; L. Vescovo; Ils Reusen; Ana Andreu; Andreas Burkart; Chiara Cilia; Sergio Contreras; Chiara Corbari; Javier F. Calleja; Radoslaw Guzinski; Christine Hellmann
The REFLEX 2012 campaign was initiated as part of a training course on the organization of an airborne campaign to support advancement of the understanding of land-atmosphere interaction processes. This article describes the campaign, its objectives and observations, remote as well as in situ. The observations took place at the experimental Las Tiesas farm in an agricultural area in the south of Spain. During the period of ten days, measurements were made to capture the main processes controlling the local and regional land-atmosphere exchanges. Apart from multi-temporal, multi-directional and multi-spatial space-borne and airborne observations, measurements of the local meteorology, energy fluxes, soil temperature profiles, soil moisture profiles, surface temperature, canopy structure as well as leaf-level measurements were carried out. Additional thermo-dynamical monitoring took place at selected sites. After presenting the different types of measurements, some examples are given to illustrate the potential of the observations made.
Ecological Informatics | 2017
Duccio Rocchini; Vaclav Petras; Anna Petrasova; Ned Horning; Ludmila Furtkevicova; Markus Neteler; Benjamin Leutner; Martin Wegmann
Abstract Remote sensing is one of the most important tools in ecology and conservation for an effective monitoring of ecosystems in space and time. Hence, a proper training is crucial for developing effective conservation practices based on remote sensing data. In this paper we aim to highlight the potential of open access data and open source software and the importance of the inter-linkages between these and remote sensing training, with an interdisciplinary perspective. We will first deal with the importance of open access data and then we provide several examples of Free and Open Source Software (FOSS) for a deeper and more critical understanding of its application in remote sensing.
Methods in Ecology and Evolution | 2018
Martin Wegmann; Benjamin Leutner; Markus Metz; Markus Neteler; Stefan Dech; Duccio Rocchini
Analyzing the changing spatial patterns of landscapes due to climate change or anthropogenic impact is important for various disciplines. Land cover change and its resulting modification of spatial patterns in the landscape influence various geographical or ecological parameters. Changing formerly continuous into discontinuous ecosystems due to land cover conversion causes isolated fragments in the landscape. Maintaining the connectivity of a fragmented landscape is relevant for e.g. nutrient cycle, water-runoff or species population persistence. Satellite imagery derived land cover can be used to analyze continuously the changing spatial arrangement of land cover types. However, analyses are computer intensive and require robust and efficient processing routines. We developed a patch-based spatial analysis system (r.pi) integrated natively into a Free and Open Source GIS (GRASS GIS) to be able to analyze large amounts of satellite derived land cover data in a semi-automatic manner, and to ensure high reproducibility and robustness. Various established and newly developed indices for spatial pattern analysis are provided in this program, to derive further meaningful information like spatial configuration, patch irreplaceability or connectivity of fragments based on a dispersal model approach. This article is protected by copyright. All rights reserved.
Archive | 2016
Martin Wegmann; Benjamin Leutner; Stefan Dech
Diversity | 2012
Benjamin Leutner; Manuel J. Steinbauer; Carina M. Müller; Andrea J. Früh; Severin D. H. Irl; Anke Jentsch; Carl Beierkuhnlein
Geospatial Health | 2015
Yvonne Walz; Martin Wegmann; Benjamin Leutner; Stefan Dech; Penelope Vounatsou; Eliézer K. N'Goran; Giovanna Raso; Jürg Utzinger
Remote Sensing in Ecology and Conservation | 2018
Ruben Remelgado; Benjamin Leutner; Kamran Safi; Ruth Sonnenschein; Carina Kuebert; Martin Wegmann
Archive | 2016
Christian Wohlfart; Mirjana Bevanda; Ned Horning; Benjamin Leutner; Martin Wegmann