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Fully Polarimetric Land Cover Classification
Details
In this manuscript a land cover classification procedure is presented utilizing the information content of fully polarimetric SAR images. An introduction to the basic concepts of remote sensing and fully polarimetric data is made in order to present Cameron's Coherent Target Decomposition technique. Cameron's method is used to extract information content from PolSAR data by characterizing each "pixel", using a set of canonical scattering mechanisms in order to describe the physical properties of the scatterer. The novelty of the proposed land cover classification approach lies on the use of Hidden Markov Models (HMM) to uniquely characterize each type of land cover, by generating an analogy between hidden states-land cover types and observations-scattering mechanisms and exploiting the transitions between scattering mechanisms in each region. The classification process is based on the likelihood of observation sequences been evaluated by each model.
Autorentext
Konstantinos Karachristos se licenció en Física por la Universidad de Patras en 2018 y obtuvo un máster en Electrónica y Procesamiento de la Información en febrero de 2020. Actualmente es candidato a doctor en la Universidad de Patras-Departamento de Física. Sus principales intereses de investigación son el aprendizaje automático, los métodos de optimización y la teledetección.
Weitere Informationen
- Allgemeine Informationen
- GTIN 09786204731841
- Genre Earth Science
- Anzahl Seiten 60
- Herausgeber LAP LAMBERT Academic Publishing
- Größe H220mm x B150mm
- Jahr 2021
- EAN 9786204731841
- Format Kartonierter Einband
- ISBN 978-620-4-73184-1
- Titel Fully Polarimetric Land Cover Classification
- Autor Konstantinos Karachristos
- Untertitel Based on Hidden Markov Models Trained with Multiple Observations.DE
- Sprache Englisch