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Block-Sparse Compressive Sensing for High-Fidelity Recording of Photoplethysmogram

机译:块稀疏压缩传感,用于高精确度记录光电容积描记图

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This paper presents a novel compressive sensing (CS) framework for photoplethysmogram (PPG) signal recording. Exploiting the concept of block sparsity in CS, the proposed framework trains a block-sparsifying dictionary for the PPG signal using the block K-SVD (BK-SVD) algorithm. Next, the block sparse Bayesian learning (BSBL) algorithm is employed to utilize the block-sparsity information and recover the PPG signal from its compressively sampled counterpart. Using different PPG datasets prerecorded from the fingertip of a healthy human volunteer under normal and post-exercise conditions, our results demonstrate that the proposed CS framework based on BK-SVD + BSBL can achieve signal-to-noise and distortion ratio (SNDR) values of >10dB for compression ratios as high as 10, outperforming the previous approaches for compressive sensing of PPG that do not utilize the block-sparsity information.
机译:本文提出了一种用于光电体积描记图(PPG)信号记录的新型压缩感测(CS)框架。利用CS中块稀疏性的概念,提出的框架使用块K-SVD(BK-SVD)算法训练PPG信号的块稀疏字典。接下来,采用块稀疏贝叶斯学习(BSBL)算法来利用块稀疏信息,并从其压缩采样副本中恢复PPG信号。使用正常人和运动后在健康志愿者的指尖预先录制的不同PPG数据集,我们的结果表明,基于BK-SVD + BSBL的CS框架可以实现信噪比和失真比(SNDR)值对于高达10的压缩率,其> 10dB的噪声,比不利用块稀疏信息的PPG压缩感测的先前方法要好。

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