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用于生物医学应用的具有低信号失真的改进型对数最小均方自适应滤波器。

Modified Log-LMS adaptive filter with low signal distortion for biomedical applications.

作者信息

Jiao Yuzhong, Cheung Rex Y P, Mok Mark P C

机构信息

Hong Kong Applied Science and Technology Research Institute ASTRI, Hong Kong, China.

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2012;2012:5210-3. doi: 10.1109/EMBC.2012.6347168.

Abstract

Life signals from human body, e.g. heartbeat or electrocardiography (ECG), are usually weak and susceptible to external noise and interference. Adaptive filter is a good tool to reduce the influence of ambient noise/interference on the life signals. Least mean squares (LMS) algorithm, as one of most popular adaptive algorithms for active noise cancellation (ANC) by adaptive filtering, has the advantage of easy implementation. In order to further decrease the complexity of LMS algorithm based adaptive filter, a Log-LMS algorithm was proposed, which quantized signals by the function of log2. The algorithm can replace multipliers by simple shifting. However, both LMS algorithm and Log-LMS algorithm have the disadvantage of serious signal distortion in biomedical applications. In this paper, a modified Log-LMS algorithm is presented, which divides the convergence process into two different stages, and utilizes different quantization method in each stage. Two scenarios of biomedical applications are used for analysis, 1) using stethoscope in emergence medical helicopter and 2) measuring ECG under power line interference. The simulated results show that the modified algorithm can achieve fast convergence and low signal distortion in processing periodic life signals.

摘要

来自人体的生命信号,例如心跳或心电图(ECG),通常很微弱,容易受到外部噪声和干扰的影响。自适应滤波器是减少环境噪声/干扰对生命信号影响的良好工具。最小均方(LMS)算法作为自适应滤波用于有源噪声消除(ANC)的最流行的自适应算法之一,具有易于实现的优点。为了进一步降低基于LMS算法的自适应滤波器的复杂度,提出了一种对数LMS算法,该算法通过log2函数对信号进行量化。该算法可以通过简单的移位来代替乘法器。然而,LMS算法和对数LMS算法在生物医学应用中都存在严重信号失真的缺点。本文提出了一种改进的对数LMS算法,该算法将收敛过程分为两个不同阶段,并在每个阶段采用不同的量化方法。使用生物医学应用的两种场景进行分析,1)在紧急医疗直升机中使用听诊器,2)在电力线干扰下测量心电图。仿真结果表明,改进算法在处理周期性生命信号时能够实现快速收敛和低信号失真。

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