Seismic Data Interpolation by the Projected Iterative Soft-threshold Algorithm for Tight Frame

Lin Tian, S. Qin
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引用次数: 1

Abstract

Seismic data recovery from missing traces is a crucial step in seismic data pre-processing. Recently researches have proposed many useful methods to reconstruct the seismic data based on compressed sensing. Curvelet frames can be used to sparsely represent the seismic data volume, analysis model has been proposed to reconstruct the seismic data, however, the latest kind of discrete curvelet transform has tight frame property, the recent insights show synthetically model is more suitable for a tight frame. A synthetically model is introduced to seismic data reconstruction; projected iterative soft-threshold algorithm (pFISTA) is used to solve the model. The recovery performs well on synthetic as well as real data by the proposed method. Comparing with the analysis model solved by an iterative soft-threshold algorithm (FISTA) in the curvelet domain, the new method has improved reconstruction efficiency and reduced the computation time.
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基于投影迭代软阈值算法的紧框架地震数据插值
地震资料失道恢复是地震资料预处理的关键步骤。近年来的研究提出了许多有用的基于压缩感知的地震数据重建方法。曲线框架可以稀疏地表示地震数据体,人们提出了分析模型来重建地震数据,但最新的离散曲线转换具有紧框架性质,最近的见解表明综合模型更适合于紧框架。将综合模型引入到地震数据重建中;采用投影迭代软阈值算法(pFISTA)求解模型。该方法对合成数据和实际数据均有较好的恢复效果。与曲线域迭代软阈值算法(FISTA)求解的分析模型相比,该方法提高了重建效率,减少了计算时间。
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