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CoSaMP: Iterative Signal Recovery from Incomplete and Inaccurate Samples

机译:CoSaMP:从不完整和不准确的样本中进行迭代信号恢复

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摘要

Compressive sampling (CoSa) is a new paradigm for developing data sampling technologies. It is based on the principle that many types of vector-space data are compressible, which is a term of art in mathematical signal processing. The key ideas are that randomized dimension reduction preserves the information in a compressible signal and that it is possible to develop hardware devices that implement this dimension reduction efficiently. The main computational challenge in CoSa is to reconstruct a compressible signal from the reduced representation acquired by the sampling device. This extended abstract describes a recent algorithm, called CoSaMP, that accomplishes the data recovery task. It was the first known method to offer near-optimal guarantees on resource usage.
机译:压缩采样(CoSa)是开发数据采样技术的新范例。它基于这样的原理:许多类型的向量空间数据都是可压缩的,这是数学信号处理中的技术术语。关键思想是随机降维将信息保留在可压缩信号中,并且有可能开发出可以有效实现降维的硬件设备。 CoSa中的主要计算挑战是从采样设备获取的简化表示中重建可压缩信号。此扩展摘要描述了一种称为CoSaMP的最新算法,该算法可以完成数据恢复任务。这是第一种为资源使用情况提供近乎最优的保证的方法。

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