FAO AGRIS - Système international des sciences et technologies agricoles

Assessing machine-learning algorithms and image- and lidar-derived variables for GEOBIA classification of mining and mine reclamation

2015

Maxwell, A.E. | Warner, T.A. | Strager, M.P. | Conley, J.F. | Sharp, A.L.


Informations bibliographiques
International journal of remote sensing
Volume 36 Numéro 4 Pagination 954 - 978 ISSN 1366-5901
Editeur
Taylor & Francis
D'autres materias
Support vector machines
Langue
anglais
Note
Funding support for this study was provided by West Virginia View, Alderson Broaddus University, and the Appalachian Research Initiative for Environmental Science (ARIES). The project described in this publication was also supported in part by Grant/Cooperative Agreement Number [08HQGR0157] from the United States Geological Survey via a subaward from AmericaView. This work was supported by the ARIES and United States Geologic Survey [grant number 08HQGR0157]. The views, opinions, and recommendations expressed herein are solely those of the authors and do not imply any endorsement by ARIES employees, other ARIES-affiliated researchers or industrial members. Its contents are solely the responsibility of the authors and do not necessarily represent the official views of the USGS.
Type
Journal Article; Text

2024-02-29
MODS
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