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首页> 外文期刊>Frontiers in Medicine >Unsupervised Phonocardiogram Analysis With Distribution Density Based Variational Auto-Encoders
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Unsupervised Phonocardiogram Analysis With Distribution Density Based Variational Auto-Encoders

机译:基于分布密度的变形自动编码器的无监督的音乐室分析

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摘要

This paper proposes an unsupervised way for Phonocardiogram (PCG) analysis, which uses a revised auto encoder based on distribution density estimation in the latent space. Auto encoders especially Variational Auto-Encoders (VAEs) and its variant β?VAE are considered as one of the state-of-the-art methodologies for PCG analysis. VAE based models for PCG analysis assume that normal PCG signals can be represented by latent vectors that obey a normal Gaussian Model, which may not be necessary true in PCG analysis. This paper proposes two methods DBVAE and DBAE that are based on estimating the density of latent vectors in latent space to improve the performance of VAE based PCG analysis systems. Examining the system performance with PCG data from the a single domain and multiple domains, the proposed systems outperform the VAE based methods. The representation of normal PCG signals in the latent space is also investigated by calculating the kurtosis and skewness where DBAE introduces normal PCG representation following Gaussian-like models but DBVAE does not introduce normal PCG representation following Gaussian-like models.
机译:本文提出了一种对PhonicardocoGram(PCG)分析的无人监测方式,它使用基于潜在空间中的分布密度估计来使用修改的自动编码器。自动编码器尤其是变形式自动编码器(VAES)及其变型β?VAE被认为是PCG分析的最先进方法之一。基于VAE用于PCG分析的模型假设正常的PCG信号可以由遵守正常高斯模型的潜在矢量来表示,在PCG分析中可能不是必要的。本文提出了基于估计潜在空间中潜伏的密度的DBVAE和DBAE的方法,提高基于VAE的PCG分析系统的性能。使用来自单个域和多个域的PCG数据检查系统性能,所提出的系统优于基于VAE的方法。通过计算Kurtosis和Skewness,还研究了潜伏空间中的正常PCG信号的表示,其中DBAE引入了高斯型模型之后的正常PCG表示,但DBVAE不会引入高斯模型之后的正常PCG表示。

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