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Compressed sensing of streaming data

机译:流数据的压缩感知

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摘要

We introduce a recursive scheme for performing Compressed Sensing (CS) on streaming data and analyze, both analytically and experimentally, the computational complexity and estimation error. The approach consists of sampling the input stream recursively via overlapping windowing and making use of the previous measurement in obtaining the next one. The signal estimate from the previous window is utilized in order to achieve faster convergence in an iterative optimization algorithm to decode the new window. To remove the bias of the estimator a two-step estimation procedure is proposed comprising support set detection and signal amplitude estimation. Estimation accuracy is enhanced by averaging estimates obtained from overlapping windows. The proposed method is shown to have asymptotic computational complexity O(nm3/2), where n is the window length, and m is the number of samples. The variance of normalized estimation error is shown to asymptotically go to 0 if k = O(n1−∈) as n increases. The simulation results show speed up of at least ten times with respect to applying traditional CS on a stream of data while obtaining significantly lower reconstruction error under mild conditions on the signal magnitudes and the noise level.
机译:我们介绍了一种对流数据执行压缩感知(CS)的递归方案,并在分析和实验上分析了计算复杂性和估计误差。该方法包括通过重叠窗口递归地对输入流进行采样,并在获得下一个测量时利用先前的测量。利用来自先前窗口的信号估计,以便在迭代优化算法中实现更快的收敛,以对新窗口进行解码。为了消除估计器的偏差,提出了包括支持集检测和信号幅度估计的两步估计程序。通过平均从重叠窗口获得的估计值,可以提高估计精度。所提出的方法具有渐近计算复杂度O(nm 3/2 ),其中n是窗口长度,m是样本数。如果k = O(n 1-ε)随着n的增加,归一化估计误差的方差显示为渐近于0。仿真结果表明,相对于在数据流上应用传统CS而言,速度至少提高了十倍,同时在温和条件下,在信号幅度和噪声水平上获得了明显更低的重构误差。

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