基于压缩感知和压缩域噪声抑制的小功率脑电监护

Nicola Bertoni, Bathiya Senevirathna, Fabio Pareschi, Mauro Mangia, R. Rovatti, P. Abshire, J. Simon, G. Setti
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引用次数: 9

摘要

能够获取和传输生物信号的无线传感器节点对于解决未来医疗监测的需求越来越重要。设计这些系统的主要问题之一是由于电池寿命有限而不可避免的能量限制,这严格限制了可能传输的数据量。压缩感知(CS)是一种新兴的技术,用于在传输前对采集到的信号进行低功耗、实时的压缩。最近开发的rakeness方法能够进一步提高CS性能。在本文中,我们应用rakeness-CS技术来增强脑电图(EEG)信号的压缩能力,特别是对诱发电位(EP)的压缩能力,诱发电位是由刺激的呈现引起的神经活动的记录。仿真结果表明,利用rakeness-CS对EPs进行了正确的重构,压缩系数为16。此外,还确定了一些有趣的去噪功能:当将rakeness-CS技术应用于脑电图数据流时,与最先进的滤波相比,高频噪声成分被拒绝,60 Hz电源线噪声降低了20dB以上。
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Low-power EEG monitor based on compressed sensing with compressed domain noise rejection
Wireless sensor nodes capable of acquiring and transmitting biosignals are increasingly important to address future needs in healthcare monitoring. One of the main issues in designing these systems is the unavoidable energy constraint due to the limited battery lifetime, which strictly limits the amount of data that may be transmitted. Compressed Sensing (CS) is an emerging technique for introducing low-power, real-time compression of the acquired signals before transmission. The recently developed rakeness approach is capable of further increasing CS performance. In this paper we apply the rakeness-CS technique to enhance compression capabilities for electroencephalographic (EEG) signals, and particularly for Evoked Potentials (EP), which are recordings of the neural activity evoked by the presentation of a stimulus. Simulation results demonstrate that EPs are correctly reconstructed using rakeness-CS with a compression factor of 16. Additionally, some interesting denoising capabilities are identified: the high-frequency noise components are rejected and the 60 Hz power line noise is decreased by more than 20dB with respect to the state-of-the-art filtering when rakeness-CS techniques are applied to the EEG data stream.
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