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K. Leuven, Since 2010, he has been a Research Assistant with the Geomatics Engineering Group His research interests include hyperspectral as well as thermal remote sensing in vegetative systems, with a specific focus on spectral and thermal mixture analysis, Laurent Tits received the M.Sc. and Ph.D. degrees in bioscience engineering (land and forest management) from the Katholieke Universiteit (KU) Leuven, 2009.

B. Somers-was-born-in-leuven, K. Belgium, and . Leuven, He received the M.Sc. and Ph.D. degrees in bioscience engineering (land and forest management) from the, he was a Researcher with the Remote Sensing Division, Flemish Institute for Technological Research (VITO), 1982.

. Ku-leuven, he started as an Assistant Professor (tenure track position) with the Division Forest He is experienced in the design and integration of the state-of-the-art remote sensing techniques to study the impact of disturbance processes (nutrient deficiencies, pests and diseases, invasive exotic species, and climate change) on the functioning of terrestrial ecosystems. His research interests include fostering the use and application of remote sensing in support of sustainable management of seminatural and urban environments, Nature and Landscape, Department of Earth and Environmental Sciences, 2013.

Y. Altmann, He received the Engineering degree in electrical engineering from École nationale supérieure d'électronique, d'électrotechnique, d'informatique , d'hydraulique et des télécommunications, 2010, the M.Sc. degree in signal processing from the National Polytechnic Institute of Toulouse 2010, and the Ph.D. degree in, 1987.