dc.contributor.author
Hagensieker, Ron
dc.date.accessioned
2018-10-11T09:28:04Z
dc.date.available
2018-10-11T09:28:04Z
dc.identifier.uri
https://refubium.fu-berlin.de/handle/fub188/23066
dc.identifier.uri
http://dx.doi.org/10.17169/refubium-862
dc.description.abstract
Satellite remote sensing enables a repeated survey of the earth’s surface. With machine
learning it is possible to recognize complex patterns from extensive data sets. Using methods
from machine learning, remote sensing images are utilized to derive large scale land use
and land cover (LULC) maps, carrying discrete information on the human management of
land and intact primary forests, as well as change processes. Such information is particularly
relevant in little developed regions, and areas which are undergoing transformation. Therefore,
satellite remote sensing is generally the preferred method for generating LULC products
within tropical regions, and particularly useful to assist tracking of change processes with
regard to deforestation or land management. The Amazon is the largest area of continuous
tropical forest in the world, and of substantial importance with regard to biodiversity, its
influence on global climate, as well as providing living space for a large number of indigenous
tribes. As tropical region, the Amazon is particularly affected by cloudy conditions, which
pose a serious challenge to many remote sensing efforts. Utilization of Synthetic Aperture
Radar (SAR) hence is promoted, as this warrants data availability at fixed intervals.
Performing land cover mapping at the deforestation frontier in the Brazilian states of Pará
and Mato Grosso, the aim of this thesis is to evaluate latest concepts from machine learning
and SAR remote sensing in the light of real world applicability. As a cumulative effort, this
thesis provides a scalable method based on Markov Random Fields, to increase classification
performance. This method is especially useful to enhance the outcome of SAR classifications,
as it directly addresses inherent SAR properties such as multi-temporality and speckle.
Furthermore, ALOS-2, RADARSAT-2, and TerraSAR-X, which are current SAR sensors
fulfilling different properties with regard to ground resolution and wavelength, are being
investigated concerning their synergetic potentials for the mapping of vegetated LULC classes
of the Brazilian Amazon. Here, the additional value of combining multiple frequencies is
evaluated using reliable validation techniques based on area adjustment. Additionally, single
performance of the three sensors is evaluated and their potentials concerning the task of
tropical mapping are estimated. Lastly, different potentials of TanDEM-X for the purpose of
tropical mapping are investigated. TanDEM-X is the first continuous spaceborne missionvi
to offer a bi-static acquisition of data, enabling the generation of height models and the
collection of coherence layers via a single pass.
en
dc.format.extent
xiv, 118 Seiten
de
dc.rights.uri
https://creativecommons.org/licenses/by/4.0/
de
dc.subject
Machine Learning
en
dc.subject
Remote Sensing
en
dc.subject.ddc
500 Naturwissenschaften und Mathematik::550 Geowissenschaften, Geologie::550 Geowissenschaften
de
dc.title
Mapping a Brazilian deforestation frontier using multi-temporal TerraSAR-X data and supervised machine learning
de
dc.contributor.gender
male
de
dc.contributor.inspector
Schulte, Achim
dc.contributor.inspector
Stellmes, Marion
dc.contributor.inspector
Rost, Tilman
dc.contributor.firstReferee
Waske, Björn
dc.contributor.furtherReferee
Hostert, Patrick
dc.date.accepted
2018-09-10
dc.identifier.urn
urn:nbn:de:kobv:188-refubium-23066-4
refubium.affiliation
Geowissenschaften
de
dcterms.accessRights.dnb
free
de
dcterms.accessRights.openaire
open access