地震贝叶斯压缩感知与勘察设计的不确定性相关向量机

G. Pilikos, Anita C. Faul
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引用次数: 8

摘要

在偏远地区采集地震数据需要在野外使用接收器的规则网格进行采样。从更少的测量中提取尽可能多的信息是经济有效的,而且由于故障或地形限制,通常是必要的。压缩感知(CS)是一种新兴的框架,它允许从比传统采样率更少的测量中重建稀疏信号。在地震CS中,稀疏求解器的使用已被证明是成功的,然而,算法缺乏预测不确定性。我们将相关向量机(RVM)应用于地震CS,并提出了一种新的利用多尺度基函数字典来捕获数据中的不同变化的方法。此外,我们建议使用一种新的预测不确定性度量,利用来自每个估计的邻居的信息来产生准确的不确定性图。我们将RVM应用于不同的地震信号,获得了最先进的重建精度。利用RVM及其预测不确定性图,可以量化与地震数据采集相关的风险,同时指导未来的调查设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Relevance Vector Machines with Uncertainty Measure for Seismic Bayesian Compressive Sensing and Survey Design
Seismic data acquisition in remote locations involves sampling using regular grids of receivers in a field. Extracting the maximum possible information from fewer measurements is cost-effective and often necessary due to malfunctions or terrain limitations. Compressive Sensing (CS) is an emerging framework that allows reconstruction of sparse signals from fewer measurements than conventional sampling rates. In seismic CS, the utilization of sparse solvers has proven to be successful, however, algorithms lack predictive uncertainties. We apply the Relevance Vector Machine (RVM) to seismic CS and propose a novel utilization of multi-scale dictionaries of basis functions that capture different variations in the data. Furthermore, we propose the use of a new predictive uncertainty measure using the information from the neighbours of each estimation to produce accurate uncertainty maps. We apply the RVM to different seismic signals and obtain state-of-the-art reconstruction accuracy. Using the RVM and its predictive uncertainty map, it is possible to quantify risk associated with seismic data acquisition and at the same time guide future survey design.
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