Predicting Microhabitat Suitability for an Endangered Small Mammal Using Sentinel-2 Data
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Ricardo Pita | Eduardo Ferreira | Sérgio Godinho | Francesco Valerio | António Mira | Nelson Fernandes | Sara M. Santos | S. Godinho | A. Mira | S. Santos | Francesco Valerio | R. Pita | N. Fernandes | E. Ferreira
[1] A. Mira,et al. Vegetation analysis in colonies of an endangered rodent, the Cabrera vole (Microtus cabrerae), in southern Portugal , 2006, Ecological Research.
[2] Laurence Hubert-Moy,et al. Evaluation of Sentinel-2 time-series for mapping floodplain grassland plant communities , 2019, Remote Sensing of Environment.
[3] P. Levelt,et al. ESA's sentinel missions in support of Earth system science , 2012 .
[4] A. Coffin. From roadkill to road ecology : a review of the ecological effects of roads , 2007 .
[5] T. Pinto-Correia,et al. Exploring the use of landscape as the basis for the identification of High Nature Value farmland: a case-study in the Portuguese montado. , 2012 .
[6] S. Parsley. Breaking the habit. , 1989, HealthTexas.
[7] A. Mira,et al. Environmental determinants of the distribution of the Cabrera vole (Microtus cabrerae) in Portugal: Implications for conservation , 2008 .
[8] Mark Broich,et al. Evaluating static and dynamic landscape connectivity modelling using a 25-year remote sensing time series , 2018, Landscape Ecology.
[9] João F. Gonçalves,et al. Assessing the multi-scale predictive ability of ecosystem functional attributes for species distribution modelling , 2018, PloS one.
[10] Verónica Andreo,et al. Rodents and satellites: Predicting mice abundance and distribution with Sentinel-2 data , 2019, Ecol. Informatics.
[11] A. Mira,et al. VEGETATION STRUCTURE AND COMPOSITION OF ROAD VERGE AND MEADOW SITES COLONIZED BY CABRERA VOLE (MICROTUS CABRERAE THOMAS) , 2007 .
[12] Gabriel Navarro,et al. Evaluation of forest fire on Madeira Island using Sentinel-2A MSI imagery , 2017, Int. J. Appl. Earth Obs. Geoinformation.
[13] P. Beja,et al. Spatial population structure of the Cabrera vole in Mediterranean farmland: The relative role of patch and matrix effects , 2007 .
[14] Witold R. Rudnicki,et al. Feature Selection with the Boruta Package , 2010 .
[15] S. Otto. Adaptation, speciation and extinction in the Anthropocene , 2018, Proceedings of the Royal Society B.
[16] Andrew K. Skidmore,et al. Erratum to "Capturing the fugitive: Applying remote sensing to terrestrial animal distribution and diversity" [Int. J. Appl. Earth Observ. Geoinform. (2007) 1-20] , 2007, International Journal of Applied Earth Observation and Geoinformation.
[17] J. Priotto,et al. Effects of agroecosystem landscape complexity on small mammals: a multi-species approach at different spatial scales , 2019, Landscape Ecology.
[18] Xuesong Han,et al. Why choose Random Forest to predict rare species distribution with few samples in large undersampled areas? Three Asian crane species models provide supporting evidence , 2017, PeerJ.
[19] Pedro Beja,et al. Conserving the Cabrera vole, Microtus cabrerae, in intensively used Mediterranean landscapes , 2006 .
[20] Luis Alonso,et al. Evaluation of Sentinel-2 Red-Edge Bands for Empirical Estimation of Green LAI and Chlorophyll Content , 2011, Sensors.
[21] Paul F. Donald,et al. Habitat connectivity and matrix restoration: the wider implications of agri‐environment schemes , 2006 .
[22] R. Tingley,et al. Conservation planners tend to ignore improved accuracy of modelled species distributions to focus on multiple threats and ecological processes , 2016 .
[23] H. Jones,et al. Remote Sensing of Vegetation: Principles, Techniques, and Applications , 2010 .
[24] W. Thuiller,et al. Predicting species distribution: offering more than simple habitat models. , 2005, Ecology letters.
[25] Andrew K. Skidmore,et al. Capturing the fugitive: Applying remote sensing to terrestrial animal distribution and diversity , 2007, Int. J. Appl. Earth Obs. Geoinformation.
[26] Ben Collen,et al. Global effects of land use on local terrestrial biodiversity , 2015, Nature.
[27] J. Evans,et al. Modeling Species Distribution and Change Using Random Forest , 2011 .
[28] Q. Wang,et al. Modelling and spatial discrimination of small mammal assemblages: an example from western Sichuan (China). , 2009, Ecological modelling.
[29] Duccio Rocchini,et al. Will remote sensing shape the next generation of species distribution models? , 2015 .
[30] N. Pettorelli,et al. Using the satellite-derived NDVI to assess ecological responses to environmental change. , 2005, Trends in ecology & evolution.
[31] Matthias Drusch,et al. Sentinel-2: ESA's Optical High-Resolution Mission for GMES Operational Services , 2012 .
[32] Peter M. Atkinson,et al. A linearised pixel-swapping method for mapping rural linear land cover features from fine spatial resolution remotely sensed imagery , 2007, Comput. Geosci..
[33] A. Melfi,et al. Image fusion of Sentinel-2 and CBERS-4 satellites for mapping soil cover in the Wetlands of Pantanal , 2017 .
[34] Gareth Jones,et al. Ground validation of presence‐only modelling with rare species: a case study on barbastelles Barbastella barbastellus (Chiroptera: Vespertilionidae) , 2010 .
[35] Onisimo Mutanga,et al. Intra-and-Inter Species Biomass Prediction in a Plantation Forest: Testing the Utility of High Spatial Resolution Spaceborne Multispectral RapidEye Sensor and Advanced Machine Learning Algorithms , 2014, Sensors.
[36] A. Bloom,et al. Are Inventory Based and Remotely Sensed Above-Ground Biomass Estimates Consistent? , 2013, PloS one.
[37] S. Godinho,et al. Chapter 4 Changing Agriculture – Changing Landscapes: What is Going on in the High Valued Montado , 2013 .
[38] F. Jiguet,et al. Road network in an agrarian landscape: Potential habitat, corridor or barrier for small mammals? , 2015 .
[39] Alex Zvoleff,et al. Calculate Textures from Grey-Level Co-Occurrence Matrices(GLCMs) , 2015 .
[40] J. Koprowski,et al. Circuit theory to estimate natal dispersal routes and functional landscape connectivity for an endangered small mammal , 2017, Landscape Ecology.
[41] Michael I. Miller,et al. A comparison of random forest variable selection methods for classification prediction modeling , 2019, Expert Syst. Appl..
[42] A. Mira,et al. Factors influencing predator roadkills: The availability of prey in road verges. , 2019, Journal of environmental management.
[43] K. Ekschmitt,et al. Influence of grain size on species–habitat models , 2011 .
[44] P. Ehrlich,et al. Accelerated modern human–induced species losses: Entering the sixth mass extinction , 2015, Science Advances.
[45] P. Sá-Sousa,et al. Introducing the montado, the cork and holm oak agroforestry system of Southern Portugal , 2011, Agroforestry Systems.
[46] Maïlys Lopes,et al. Bee diversity in crop fields is influenced by remotely-sensed nesting resources in surrounding permanent grasslands , 2018, Ecological Indicators.
[47] Cornelius Senf,et al. Habitat metrics based on multi‐temporal Landsat imagery for mapping large mammal habitat , 2019, Remote Sensing in Ecology and Conservation.
[48] Giovanni Rapacciuolo,et al. Strengthening the contribution of macroecological models to conservation practice , 2018, Global Ecology and Biogeography.
[49] D. Barrett,et al. Estimating fractional cover of photosynthetic vegetation, non-photosynthetic vegetation and bare soil in the Australian tropical savanna region upscaling the EO-1 Hyperion and MODIS sensors. , 2009 .
[50] P. Beja,et al. Combining distribution modelling and non-invasive genetics to improve range shift forecasting , 2015 .
[51] Daniel Fink,et al. Correcting for bias in distribution modelling for rare species using citizen science data , 2018 .
[52] M. L. Mathias,et al. Is habitat selection by the Cabrera vole (Microtus cabrerae) related to food preferences , 2008 .
[53] Robert M. Haralick,et al. Textural Features for Image Classification , 1973, IEEE Trans. Syst. Man Cybern..
[54] R. Escadafal,et al. Remote sensing of arid soil surface color with Landsat thematic mapper , 1989 .
[55] G. Matteucci,et al. The reliability of a composite biodiversity indicator in predicting bird species richness at different spatial scales , 2016 .
[56] M. Hardisky. The Influence of Soil Salinity, Growth Form, and Leaf Moisture on-the Spectral Radiance of Spartina alterniflora Canopies , 2008 .
[57] H. Rebelo,et al. Painting maps with bats: species distribution modelling in bat research and conservation , 2016 .
[58] A. Gitelson,et al. Non‐destructive optical detection of pigment changes during leaf senescence and fruit ripening , 1999 .
[59] M. Price. High Nature Value Farming in Europe: 35 European Countries—Experiences and Perspectives , 2013 .
[60] Matthew A. Williamson,et al. Decision Support Frameworks and Tools for Conservation , 2018 .
[61] António Mira,et al. Microtus cabrerae (Rodentia: Cricetidae) , 2014 .
[62] Domingo Alcaraz-Segura,et al. Remotely Sensed Variables of Ecosystem Functioning Support Robust Predictions of Abundance Patterns for Rare Species , 2019, Remote. Sens..
[63] J. Arroyo,et al. Soil seed bank and floristic diversity in a forest-grassland mosaic in southern Spain , 2003 .
[64] Nicolas Brodu,et al. Super-Resolving Multiresolution Images With Band-Independent Geometry of Multispectral Pixels , 2016, IEEE Transactions on Geoscience and Remote Sensing.
[65] B. Gao. NDWI—A normalized difference water index for remote sensing of vegetation liquid water from space , 1996 .
[66] J. A. Schell,et al. Monitoring vegetation systems in the great plains with ERTS , 1973 .
[67] Pedro J. Leitão,et al. Improving Models of Species Ecological Niches: A Remote Sensing Overview , 2019, Front. Ecol. Evol..
[68] Nathalie Pettorelli,et al. Better together: Integrating and fusing multispectral and radar satellite imagery to inform biodiversity monitoring, ecological research and conservation science , 2017 .
[69] A. Mira,et al. Accounting for Connectivity Uncertainties in Predicting Roadkills: a Comparative Approach between Path Selection Functions and Habitat Suitability Models , 2019, Environmental Management.
[70] N. Guiomar,et al. Estimating tree canopy cover percentage in a mediterranean silvopastoral systems using Sentinel-2A imagery and the stochastic gradient boosting algorithm , 2018 .
[71] A. Clevenger,et al. Highway verges as habitat providers for small mammals in agrosilvopastoral environments , 2012, Biodiversity and Conservation.
[72] W. Ripple,et al. Extinction risk is most acute for the world’s largest and smallest vertebrates , 2017, Proceedings of the National Academy of Sciences.
[73] Sunil Kumar,et al. Effects of spatial heterogeneity on butterfly species richness in Rocky Mountain National Park, CO, USA , 2008, Biodiversity and Conservation.
[74] Y. Wiersma,et al. Predictive species and habitat modeling in landscape ecology : concepts and applications , 2011 .
[75] S. Godinho,et al. An analysis of the drivers that affect greening and browning trends in the context of pursuing land degradation-neutrality , 2019, Remote Sensing Applications: Society and Environment.
[76] Corey J A Bradshaw,et al. Synergies among extinction drivers under global change. , 2008, Trends in ecology & evolution.
[77] Erle C. Ellis,et al. Monitoring biodiversity in the Anthropocene using remote sensing in species distribution models , 2020 .
[78] S. Martínez. Les étages bioclimatiques de la végétation de la Péninsule Ibérique , 1980 .
[79] J. Engler,et al. Avian SDMs : current state, challenges, and opportunities , 2017 .
[80] Jennifer A. Miller,et al. Mapping Species Distributions: Spatial Inference and Prediction , 2010 .
[81] S. Rambal,et al. The dehesa system of southern Spain and Portugal as a natural ecosystem mimic , 1999, Agroforestry Systems.
[82] Y. Handrich,et al. Road-related landscape elements as a habitat: A main asset for small mammals in an intensive farming landscape , 2017 .
[83] J. Ragle,et al. IUCN Red List of Threatened Species , 2010 .
[84] N. Guiomar,et al. The effects of grazing management in montado fragmentation and heterogeneity , 2016, Agroforestry Systems.
[85] N. Guiomar,et al. Assessment of environment, land management, and spatial variables on recent changes in montado land cover in southern Portugal , 2016, Agroforestry Systems.
[86] N. Pettorelli,et al. The Normalized Difference Vegetation Index (NDVI): unforeseen successes in animal ecology , 2011 .
[87] John Bell,et al. A review of methods for the assessment of prediction errors in conservation presence/absence models , 1997, Environmental Conservation.
[88] Leo Breiman,et al. Random Forests , 2001, Machine Learning.
[89] Duccio Rocchini,et al. Measuring Rao's Q diversity index from remote sensing: An open source solution , 2017 .
[90] R. Robinson,et al. Integrating dynamic environmental predictors and species occurrences: Toward true dynamic species distribution models , 2019, Ecology and evolution.
[91] Elia Quirós,et al. Overstory-understory land cover mapping at the watershed scale: accuracy enhancement by multitemporal remote sensing analysis and LiDAR , 2019, Environmental Science and Pollution Research.
[92] F. Moreira,et al. Drivers of survival in a small mammal of conservation concern: An assessment using extensive genetic non-invasive sampling in fragmented farmland , 2019, Biological Conservation.
[93] A. Lehmann,et al. Using Niche‐Based Models to Improve the Sampling of Rare Species , 2006, Conservation biology : the journal of the Society for Conservation Biology.
[94] J. Qi,et al. Remote Sensing for Grassland Management in the Arid Southwest , 2006 .
[95] Witold R. Rudnicki,et al. The All Relevant Feature Selection using Random Forest , 2011, ArXiv.