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Source Separation of the Second Heart Sound Using Gaussian Mixture Models

机译:使用高斯混合模型的第二心音源分离

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In this work, we present a method to separate aortic (A2) and pulmonary (P2) components from second heart sounds (S2). The proposed approach captures the different dynamical behavior of A2 and P2 components via a joint Gaussian mixture model, which is then used to perform separation via a closed-form conditional mean estimator.The proposed approach is tested over synthetic heart sounds and it is shown guarantee a reduction of approximately 25% of the normalized root mean-squared error incurred in signal separation, with respect to a previously presented approach in the literature.
机译:在这项工作中,我们提出了一种从第二种心音(S2)中分离出主动脉(A2)和肺部(P2)成分的方法。提出的方法通过联合高斯混合模型捕获A2和P2组分的不同动力学行为,然后通过封闭形式的条件均值估计器进行分离。相对于文献中先前提出的方法,信号分离所引起的归一化均方根误差减少了约25%。

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