Interpolation and denoising of seismic signals using orthogonal matching pursuit algorithm: An aplication in VSP and refraction data

Rómulo Sandoval-Flórez, J. Paredes, F. Vivas, F. Cabrera
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引用次数: 2

Abstract

An implementation of the Orthogonal Matching Pursuit (OMP) algorithm was used and the results obtained therefrom are presented for simultaneous interpolation and denoising from seismic signals in the framework of sparse signal representation. OMP is an algorithm for sparse signal representation based on orthogonal projections underlying the signal over an over-complete dictionary. This over-complete dictionary was designed using K-times Singular Values Decomposition (K-SVD). In each iteration, OMP calculates a new signal approximation and the approximation error is used in the next iteration to determine the new element. The new element corresponds to the largest magnitude of the inner products between the current residual and the original elements in the dictionary. The implemented algorithm was applied to VSP seismic data and refraction seismic data; results for the application in restored missing traces and denoise signals are presented.
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基于正交匹配追踪算法的地震信号插值与去噪:在VSP和折射数据中的应用
采用正交匹配追踪(OMP)算法实现了地震信号在稀疏表示框架下的同时插值和去噪。OMP是一种稀疏信号表示算法,它基于信号在过完备字典上的正交投影。该字典采用k次奇异值分解(K-SVD)设计。在每次迭代中,OMP计算一个新的信号近似,并在下一次迭代中使用近似误差来确定新的元素。新元素对应于字典中当前剩余元素与原始元素之间的内积的最大幅度。将实现的算法应用于VSP地震数据和折射地震数据;给出了该方法在缺失迹线和去噪信号恢复中的应用结果。
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