Robotics and Mechatronics Systems Research Group, School of Engineering and Informatics, University of Sussex, Brighton BN1 9QJ, UK.
Sensors (Basel). 2023 Mar 28;23(7):3527. doi: 10.3390/s23073527.
In bio-signal denoising, current methods reported in the literature consider purely simulated environments, requiring high computational powers and signal processing algorithms that may introduce signal distortion. To achieve an efficient noise reduction, such methods require previous knowledge of the noise signals or to have certain periodicity and stability, making the noise estimation difficult to predict. In this paper, we solve these challenges through the development of an experimental method applied to bio-signal denoising using a combined approach. This is based on the implementation of unconventional electric field sensors used for creating a noise replica required to obtain the ideal Wiener filter transfer function and achieve further noise reduction. This work aims to investigate the suitability of the proposed approach for real-time noise reduction affecting bio-signal recordings. The experimental evaluation presented here considers two scenarios: (a) human bio-signals trials including electrocardiogram, electromyogram and electrooculogram; and (b) bio-signal recordings from the MIT-MIH arrhythmia database. The performance of the proposed method is evaluated using qualitative criteria (i.e., power spectral density) and quantitative criteria (i.e., signal-to-noise ratio and mean square error) followed by a comparison between the proposed methodology and state of the art denoising methods. The results indicate that the combined approach proposed in this paper can be used for noise reduction in electrocardiogram, electromyogram and electrooculogram signals, achieving noise attenuation levels of 26.4 dB, 21.2 dB and 40.8 dB, respectively.
在生物信号去噪中,文献中报道的当前方法仅考虑纯模拟环境,需要高计算能力和可能引入信号失真的信号处理算法。为了实现有效的降噪,此类方法需要预先了解噪声信号,或者具有一定的周期性和稳定性,这使得噪声估计难以预测。在本文中,我们通过开发一种应用于生物信号去噪的实验方法来解决这些挑战,该方法采用了组合方法。这是基于使用非常规电场传感器的实现,用于创建所需的噪声副本,以获得理想的维纳滤波器传递函数并进一步降低噪声。本工作旨在研究所提出的方法在实时影响生物信号记录的降噪中的适用性。这里提出的实验评估考虑了两种情况:(a)包括心电图、肌电图和眼电图在内的人体生物信号试验;(b)来自 MIT-MIH 心律失常数据库的生物信号记录。使用定性标准(即功率谱密度)和定量标准(即信噪比和均方误差)评估所提出方法的性能,然后将所提出的方法与最新的去噪方法进行比较。结果表明,本文提出的组合方法可用于心电图、肌电图和眼电图信号的降噪,分别实现 26.4dB、21.2dB 和 40.8dB 的噪声衰减水平。