Efficient Compressive Sensing of Biomedical Signals Using A Permuted Kronecker-based Sparse Measurement Matrix

P. Firoozi, S. Rajan, I. Lambadaris
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Abstract

Compressive sensing (CS) is an innovative approach to simultaneously measure and compress signals such as biomedical signals that are sparse or compressible. A major effort in CS is to design a measurement matrix that can be used to encode and compress such signals. The measurement matrix structure has a direct impact on the computational and storage costs as well as the recovered signal quality. Sparse measurement matrices (i.e. with few non-zero elements) may drastically reduce these costs. We propose a permuted Kronecker-based sparse measurement matrix for sensing and data recovery in CS applications. In our study, we use three classes of sub-matrices (normalized Gaussian, Bernoulli, and BCH-based matrices) to create the proposed measurement matrix. Using ECG signals from the MIT-BIH Arrhythmia database, we show that the reconstructed signal quality is comparable to the ones achieved using well known CS methods. Our methodology results in an overall reduction in storage and computations, both during the sensing and recovery process. This approach can be generalized to other classes of eligible measurement matrices in CS.
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基于排列kronecker稀疏测量矩阵的生物医学信号有效压缩感知
压缩感知(CS)是一种同时测量和压缩稀疏或可压缩的生物医学信号的创新方法。CS的主要工作是设计一个测量矩阵,可以用来对这些信号进行编码和压缩。测量矩阵的结构直接影响到计算和存储成本以及恢复的信号质量。稀疏测量矩阵(即只有很少的非零元素)可以大大降低这些成本。我们提出了一种基于kronecker的稀疏测量矩阵,用于CS应用中的传感和数据恢复。在我们的研究中,我们使用三类子矩阵(归一化高斯矩阵、伯努利矩阵和基于bch的矩阵)来创建提议的测量矩阵。使用来自MIT-BIH心律失常数据库的心电信号,我们表明重建的信号质量与使用已知的CS方法获得的信号质量相当。在传感和恢复过程中,我们的方法总体上减少了存储和计算。这种方法可以推广到CS中其他类型的测量矩阵。
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