基于地震图像新特征的地震结构分类

Ghadah Alhabib, Ghazanfar Latif, J. Alghazo, G. B. Brahim
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引用次数: 0

摘要

地震相可以作为一种新的特征来划分不同类型的地震构造。地震构造的分类有助于矿物学、粒度近似、沉积单元的渗透率以及感兴趣区域的识别。为了提取地震图像的特征,采用了以下几种提取方法:离散小波变换特征、离散余弦变换特征、离散傅立叶变换特征和Gabor特征。考虑的分类方法有支持向量机(SVM)、随机森林(RF)、快速决策树(FDT)和Naïve贝叶斯(NB)。拟议的研究使用LANDMASS数据库,由两个数据集组成,LANDMASS-1有17,667幅图像,LANDMASS-2有4,000幅图像。数据集包含四种不同类型地震结构的地震图像;混沌,断层,地平线和盐丘。本研究结果证明,森林树分类方法与离散余弦变换特征提取方法相结合的准确率最高,约为94.17%,高于现有文献报道的同类方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Seismic Structures Classification Using Novel Features from Seismic Images
Seismic facies can be used as novel features to classify different classes of seismic structures. Classification of seismic structure is beneficial for mineralogy, grain size approximation, the permeability of deposition units, and the identification of areas of interest. To extract features of seismic images, the following extraction methods were used: Discrete Wavelet Transform Features, Discrete Cosine Transform Features, Discrete Fourier Transform Features, and Gabor Features. The classification methods being considered are Support Vector Machine (SVM), Random Forest (RF), Fast Decision Trees (FDT), and Naïve Bayes (NB). The proposed study uses the LANDMASS database, composed of two datasets, LANDMASS-1, with 17,667 images, and LANDMASS-2, with 4,000 images. The datasets contain seismic images of four different classes of seismic structures; Chaotic, Fault, Horizon, and Salt Dome. The outcome of this study proves that the combination of Forest Tree classification method and the Discrete Cosine Transform Features extraction method achieved the highest accuracy, which was around 94.17% - higher than that achieved considering similar methods reported in the extant literature.
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