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SalSi: A new seismic attribute for salt dome detection

2019-01-09
Muhammad Amir Shafiq, Tariq Alshawi, Zhiling Long, Ghassan AlRegib

Abstract

In this paper, we propose a saliency-based attribute, SalSi, to detect salt dome bodies within seismic volumes. SalSi is based on the saliency theory and modeling of the human vision system (HVS). In this work, we aim to highlight the parts of the seismic volume that receive highest attention from the human interpreter, and based on the salient features of a seismic image, we detect the salt domes. Experimental results show the effectiveness of SalSi on the real seismic dataset acquired from the North Sea, F3 block. Subjectively, we have used the ground truth and the output of different salt dome delineation algorithms to validate the results of SalSi. For the objective evaluation of results, we have used the receiver operating characteristics (ROC) curves and area under the curves (AUC) to demonstrate SalSi is a promising and an effective attribute for seismic interpretation.

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URL

https://arxiv.org/abs/1901.02937

PDF

https://arxiv.org/pdf/1901.02937


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