Title of article :
Modelling Potential Field Sources in the Gelibolu Peninsula (Western Turkey) Using a Markov Random Field Approach
Author/Authors :
A. Muhittin Albora، نويسنده , , Osman N. Ucan ، نويسنده , , Davut Aydogan ، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2007
Abstract :
In this study, a Markov Random Field (MRF) approach is used to locate source boundary
positions which are difficult to identify from Bouguer gravity and magnetic maps. As a generalized form of
Markov Chains, the MRF approach is an unsupervised statistical model based algorithm and is applied to
the analysis of images, particularly in the detection of visual patterns or textures. Here, we present a
dynamic programming based on the MRF approach for boundary detection of noisy and super-positioned
potential anomalies, which are produced by various geological structures. In the MRF method, gravity and
magnetic maps are considered as two-dimensional (2-D) images with a matrix composed of N1 · N2
pixels. Each pixel value of the matrix is optimized in real time with no a priori processing by using two
parameter sets; average steering vector (h) and quantization level (M). They carry information about the
correlation of neighboring pixels and the locality of their connections. We have chosen MRF as a
processing approach for geophysical data since it is an unsupervised, efficient model for image
enhancement, border detection and separation of 2-D potential anomalies. The main benefit of MRF is
that an average steering vector and a quantization level are enough in evaluation of the potential anomaly
maps.We have compared the MRF method to noise implemented synthetic potential field anomalies. After
satisfactory results were found, the method has been applied to gravity and magnetic anomaly maps of
Gelibolu Peninsula in Western Turkey. Here, we have observed Anafartalar thrust fault and another
parallel fault northwest of Anafartalar thrust fault. We have modeled a geological structure including a
lateral fault, which results in a higher susceptibility and anomaly amplitude increment. We have shown
that the MRF method is effective to detect the broad-scale geological structures in the Gelibolu Peninsula,
and thus to delineate the complex tectonic structure of Gelibolu Peninsula.
Keywords :
Markov random field , gravity and magnetic maps , GeliboluPeninsula , Turkey. , Boundary analysis
Journal title :
Pure and Applied Geophysics
Journal title :
Pure and Applied Geophysics