基于忆阻交叉棒的离散希尔伯特变换在紧凑生物信号处理中的应用

Lei Zhang, Zhuolin Yang, Kedar K. Aras, Igor R. Efimov, G. Adam
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引用次数: 0

摘要

希尔伯特变换在生物医学信号处理中应用广泛,需要高效实现。我们提出了基于新兴忆阻器器件的离散希尔伯特变换的实现。它使用两个矩阵乘法层,使用在忆阻器阵列中编程的权重和一个可映射到CMOS的线性哈达玛乘积计算层。该功能在来自人类心脏的光学心脏信号数据集上进行了测试。结果表明,所提出的实现与MATLAB函数之间的角度误差小于1%,可以忽略不计。它对非理想性也具有鲁棒性。该方法可应用于边缘的生物信号处理。
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Discrete Hilbert Transform via Memristor Crossbars for Compact Biosignal Processing
The Hilbert transform is widely used in biomedical signal processing and requires efficient implementation. We propose the implementation of the discrete Hilbert transform based on emerging memristor devices. It uses two matrix multiplication layers using weights programmed in the memristor array and a linear Hadamard product calculation layer mappable to CMOS. The functionality was tested on a dataset of optical cardiac signals from the human heart. The results show negligible <1% angle error between the proposed implementation and the MATLAB function. It also has robustness to non-idealities. This proposed solution can be applied to bio-signal processing at the edge.
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