Reconstruction of the full-polarimetric covariance matrix from compact-polarimetric synthetic aperture radar data with convolutional neural networks
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https://hdl.handle.net/10037/11925Date
2017-09-05Type
Master thesisMastergradsoppgave
Author
Bollo Del Rio, UmbertoAbstract
The focus of this thesis is to find an alternative way to reconstruct a pseudo quadrature
polarimetric (quad-pol) covariance matrix from compact polarimetric (compact-pol) data.
In the latest years, the compact polarimetry SAR mode was developed and used more and
more widely. It provides a good compromise between area covered and information content per
pixel [13].
The literature has focused for a long time on quad-pol data in the past. They contain more
information compared to compact-pol data. Moreover, several ways to extract useful information
from quad-pol SAR images have been developed [8].
Compact-pol data can be considered as a lossy compression from quad-pol data, which has
inspired research to find ways to reconstruct the latter format from the former. This allows to apply
all the methods and algorithms developed for data analysis of quad-pol data to a reconstructed
pseudo quad-pol data.
The elaboration of more and more effective deep learning techniques in the last few years has
guided us to consider convolutional neural networks (ConvNets) a suitable tool for our problem.
ConvNets take advantage of the properties of grid-like topology data [7]. They are able to locate
spatial and time local connections.
After making assumptions of reflection symmetry for the polarimetric covariance matrix, the
reconstruction problem can be formulated as the regression from an image 224x224 with 4 channels,
representing the compact-pol covariance matrix, to an image 224x224 with 5 channels, representing
the quad-pol covariance matrix. This is the reason why we thought that ConvNets could be a good
choice from the available suite of machine learning algorithms.
Our results were then compared with previous reconstruction methods, Souyris and Nord's
[6, 37], applying the same data set. The methods developed in this thesis showed, on average,
slightly worse results than those in the literature. However, we observed that, in same cases, they
produced interesting outcomes, for example, a good generalization ability.
Publisher
UiT Norges arktiske universitetUiT The Arctic University of Norway
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