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Efficient reference-free adaptive artifact cancellers for impedance cardiography based remote health care monitoring systems

机译:适用于基于阻抗心动图的远程医疗监控系统的高效无参考自适应伪影消除器

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摘要

In this paper, a new model for adaptive artifact cancelation in impedance cardiography (ICG) signals is presented. It is a hybrid model based on wavelet decomposition and an adaptive filter. A novel feature of this model is the implementation of reference-free adaptive artifact cancellers (AAC). For this implementation, the reference signal is constructed using a wavelet transformation. During critical conditions the filter weights may be negative and cause an imbalance in the convergence. To overcome this problem, we introduce non-negative adaptive algorithms in the proposed artifact canceller. To accelerate the performance of the AAC, we propose exponential non-negative and normalized non-negative algorithms to update the filter coefficients. The computational complexity of the filtering section in a remote health care system is important to avoid inter-symbol interference of the incoming samples. This can be achieved by combining sign-based algorithms with the adaptive filtering section. Finally, several AACs are developed using variants of the non-negative algorithms and performance measures are computed and compared. All of the proposed AACs are tested on actual ICG signals. Among the AACs evaluated, sign regressor normalized non-negative LMS (SRN3LMS) based adaptive artifact canceller achieves highest signal to noise ratio (SNR). The SNR achieved by this algorithm in baseline wander artifact elimination is 8.5312 dBs, in electrode muscle artifact elimination is 7.5908 dBs and in impedance measurement artifact elimination is 8.4231 dBs.
机译:在本文中,提出了一种新的阻抗心动图(ICG)信号自适应伪影消除模型。它是基于小波分解和自适应滤波器的混合模型。该模型的一个新颖特征是实现了无参考自适应伪像消除器(AAC)。对于此实现,参考信号是使用小波变换构造的。在临界条件下,过滤器权重可能为负,并导致收敛不平衡。为了克服这个问题,我们在提出的伪影消除器中引入了非负自适应算法。为了提高AAC的性能,我们提出了指数非负和归一化非负指数算法来更新滤波器系数。远程医疗系统中过滤部分的计算复杂度对于避免传入样本的符号间干扰非常重要。这可以通过将基于符号的算法与自适应滤波部分结合来实现。最后,使用非负算法的变体开发了几种AAC,并计算和比较了性能指标。所有提议的AAC均在实际的ICG信号上进行了测试。在评估的AAC中,基于符号回归归一化非负LMS(SRN 3 LMS)的自适应伪影消除器可实现最高的信噪比(SNR)。该算法在基线漂移伪影消除,电极肌肉伪影消除为7.5908dBs,阻抗测量伪影消除为8.4231dBs时达到的SNR为8.5312dBs。

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