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Compressive sensing: A new approach to seismic data acquisition

机译:压缩感测:地震数据采集的新方法

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摘要

Sensing and imaging systems are under increasing pressure to accommodate ever-larger and higher-dimensional data sets; ever-faster capture, sampling, and processing rates; ever-lower power consumption; ever-smaller form factor; and new sensing modalities. These needs have motivated the development of new approaches to signal acquisition and processing. We provide an introduction to the field of compressive sensing (CS), which has stimulated a rethinking of sensor and signal processing system design. In CS, analog signals are digitized and processed not via uniform sampling but via measurements using more general, even random, test functions. In contrast to conventional wisdom, the new theory asserts that one can combine "sub-Nyquist rate sampling" with large-scale optimization for efficient and accurate signal acquisition when the signal has a sparse structure. Particular topics addressed include signal sparsity, randomized sampling, optimization-based signal recovery, and perspectives on applications to seismic data acquisition and processing.
机译:传感和成像系统面临越来越大的压力,无法容纳更大和更高维度的数据集。更快的捕获,采样和处理速率;更低的功耗;尺寸越来越小;以及新的感应方式。这些需求推动了信号采集和处理新方法的发展。我们对压缩感测(CS)领域进行了介绍,从而激发了对传感器和信号处理系统设计的重新思考。在CS中,模拟信号不是通过统一采样进行数字化处理的,而是通过使用更通用,甚至随机的测试功能进行的测量进行处理的。与传统观点相反,新理论断言,当信号具有稀疏结构时,可以将“次奈奎斯特速率采样”与大规模优化相结合,以实现高效,准确的信号采集。涉及的特定主题包括信号稀疏性,随机采样,基于优化的信号恢复以及对地震数据采集和处理的应用前景。

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