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A Wavelet Transform-Based Neural Network Denoising Algorithm for Mobile Phonocardiography

机译:基于小波变换的神经心动心动图神经网络降噪算法

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摘要

Cardiovascular pathologies cause 23.5% of human deaths, worldwide. An auto-diagnostic system monitoring heart activity, which can identify the early symptoms of cardiac illnesses, might reduce the death rate caused by these problems. Phonocardiography (PCG) is one of the possible techniques able to detect heart problems. Nevertheless, acoustic signal enhancement is required since it is exposed to various disturbances coming from different sources. The most common denoising enhancement is based on the Wavelet Transform (WT). However, the WT is highly susceptible to variations in the noise frequency distribution. This paper proposes a new adaptive denoising algorithm, which combines WT and Time Delay Neural Networks (TDNN). The acquired signal is decomposed by means of the WT using the coif five-wavelet basis at the tenth decomposition level and then provided as input to the TDNN. Besides the advantage of adaptive thresholding, the reason for using TDNNs is their capacity of estimating the Inverse Wavelet Transform (IWT). The best parameters of the TDNN were found for a NN consisting of 25 neurons in the first and 15 in the second layer and the delay block of 12 samples. The method was evaluated on several pathological heart sounds and on signals recorded in a noisy environment. The performance of the developed system with respect to other wavelet-based denoising approaches was validated by the online questionnaire.
机译:心血管疾病导致全世界23.5%的人死亡。监视心脏活动的自动诊断系统可以识别心脏病的早期症状,可以降低这些问题引起的死亡率。心音图检查(PCG)是能够检测心脏问题的可能技术之一。然而,由于声信号会受到来自不同来源的各种干扰的影响,因此仍需要增强声信号。最常见的降噪增强功能基于小波变换(WT)。但是,WT非常容易受到噪声频率分布变化的影响。本文提出了一种新的自适应降噪算法,该算法结合了WT和时延神经网络(TDNN)。借助于WT,使用coif五小波在第十分解级别上分解所获取的信号,然后将其作为输入提供给TDNN。除了自适应阈值的优点外,使用TDNN的原因还在于它们估计逆小波变换(IWT)的能力。对于由第一层中的25个神经元和第二层中的15个神经元以及12个样本的延迟块组成的NN,发现TDNN的最佳参数。在几种病理性心音和嘈杂环境中记录的信号上评估了该方法。相对于其他基于小波的去噪方法,已开发系统的性能已通过在线问卷进行了验证。

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