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Chirp Sensing Codes: Deterministic Compressed Sensing Measurements For Fast Recovery

机译:线性调频传感代码:确定性的压缩传感测量,可快速恢复

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摘要

Compressed sensing is a novel technique to acquire sparse signals with few measurements. Normally, compressed sensing uses random projections as measurements. Here we design deterministic measurements and an algorithm to accomplish signal recovery with computational efficiency. A measurement matrix is designed with chirp sequences forming the columns. Chirps are used since an efficient method using FFTs can recover the parameters of a small superposition. We show that this type of matrix is valid as compressed sensing measurements. This is done by bounding the eigenvalues of sub-matrices, as well as an empirical comparison with random projections. Further, by implementing our algorithm, simulations show successful recovery of signals with sparsity levels similar to those possible by matching pursuit with random measurements. For sufficiently sparse signals, our algorithm recovers the signal with computational complexity O(K log K) for K measurements. This is a significant improvement over existing algorithms.
机译:压缩感测是一种新颖的技术,只需很少的测量即可获取稀疏信号。通常,压缩感测使用随机投影作为度量。在这里,我们设计确定性的测量和一种算法,以实现具有计算效率的信号恢复。设计一个测量矩阵,其中线性调频序列形成列。之所以使用线性调频,是因为使用FFT的有效方法可以恢复小叠加的参数。我们表明,这种类型的矩阵可有效用作压缩传感测量。这是通过限制子矩阵的特征值以及与随机投影的经验比较来完成的。此外,通过实施我们的算法,仿真结果显示成功恢复了稀疏度水平的信号,类似于通过将追踪与随机测量相匹配而可能得到的信号。对于足够稀疏的信号,我们的算法以K个测量的计算复杂度O(K log K)来恢复信号。这是对现有算法的重大改进。

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