Change detection in multi-temporal SAR images

View/ Open
Date
2012Author
Advisor
Version
Acceso abierto / Sarbide irekia
Type
Proyecto Fin de Carrera / Ikasketen Amaierako Proiektua
Impact
|
nodoi-noplumx
|
Abstract
Change detection in multi-temporal SAR imagery it’s a useful
tool for preventing natural disasters, studies of the terrain and many
other utilities but it’s a tool in constant improvement always looking
for better results and less computational costs. Though there are
many ways to deal with it, the present thesis focuses in change
detection using a generalization of the Kittler & Illingworth ...
[++]
Change detection in multi-temporal SAR imagery it’s a useful
tool for preventing natural disasters, studies of the terrain and many
other utilities but it’s a tool in constant improvement always looking
for better results and less computational costs. Though there are
many ways to deal with it, the present thesis focuses in change
detection using a generalization of the Kittler & Illingworth threshold
(GKIT) algorithm which aim is to obtain an unsupervised method for
change detection in multi-temporal images. However, the kittler &
Illingworth method on his own it’s not enough in most of the cases
for precise unsupervised change detection. Many factors affect the
results. The most significant it’s the “speckle” noise, a common
multiplicative noise in SAR images. K&I uses a ratio approach to
discriminate the “speckle” noise and make it easier to eliminate. As
the K&I it’s not enough to eliminate the noise many filters are
implemented based on wavelet filtering. With two wavelet filtering
approaches, based on the discrete wavelet transform (DWT) and on
the stationary wavelet transform (SWT), the results are better but
still imprecise. The solution to this drawback it’s a multi-channel
fusion method based on the Markov random fields (MRF). The MRF
method fuses filtered ratio images and the original one in order to
obtain a final ratio image that eliminates most of the noise retaining
most of the details. The use of all this concepts will make a very
efficient and precise change detection in multi-temporal SAR images. [--]
Subject
Synthetic aperture radar (SAR),
Change detection,
Multi-temporal images
Departament
Universidad Pública de Navarra. Departamento de Ingeniería Eléctrica y Electrónica /
Nafarroako Unibertsitate Publikoa. Ingeniaritza Elektrikoa eta Elektronikoa Saila
Degree
Ingeniería Técnica de Telecomunicación, especialidad Sonido e Imagen /
Telekomunikazio Ingeniaritza Teknikoa. Soinua eta Irudia Berezitasuna