Analysis by Wavelet Frames of Spatial Statistics in SAR Data for Characterizing Structural Properties of Forests
Spatial statistics (texture) in SAR backscatter data
of forested areas bears information on structural and geometric
properties that could be useful in mapping forest extent, species
type, and stages of regeneration or degradation. Based on a previously
published theoretical approach in deriving texture measures
from SAR data using wavelet frames, experiments are reported
that aim to characterize, from a purely observational point of
view, wavelet texture measures¿ sensitivity with respect to target
structural properties and SAR configurations. Suitable analytical
tools are introduced to represent dependences in the combined
space¿scale¿polarization domain through signatures that condense
information in graphical form. Moreover, class separability,
afforded by wavelet texture measures in a supervised classification
setting and based on the Fischer linear discriminant analysis,
is considered. This paper focuses on two structurally different
forest types (tropical rain forest in the Central Africa Congo
Floodplain and mixed-species wooded savanna in Queensland,
Australia) and uses data from orbital radars, particularly from
the Japanese Advanced Land Observing Satellite Phased Arrayed
L-band Synthetic Aperture Radar. The analysis indicated that
textural information from spatial statistics can provide, in some
cases, better class separability in forest mapping with respect to
one-point statistics, although spatial resolution in texture products
is reduced. However, dependences of texture measures on the
polarization state are detected, particularly in forests where a
greater diversity of scattering mechanisms occurs.
DE GRANDI Gianfranco;
LUCAS Richard;
KROPACEK Jan;
2009-09-14
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
JRC53920
0196-2892,
https://publications.jrc.ec.europa.eu/repository/handle/JRC53920,
10.1109/TGRS.2008.2006183,
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