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Adaptive noise cancellation and classification of lung sounds under practical environment

机译:实际环境中的自适应噪声消除和肺音分类

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Lung sound (LS) offers an effective way to detect and discriminate the respiratory disease. However, in practical environments an LS record is subject to serious noise contamination which may be addressed by adaptive noise cancellation (ANC). A least mean square (LMS) algorithm based ANC method is presented by this paper for signal enhancement of LS under practical noisy environment. Based on the hidden Markov model (HMM), minimum classification error (MCE) is adopted to further improve the discriminative performance of LS. Experimental results confirm the effectiveness of the ANC, and the HMM-MCE based lung sounds recognition approach outperforms the traditional HMM-ML(maximum likelihood) method.
机译:肺音(LS)提供了一种检测和区分呼吸系统疾病的有效方法。但是,在实际环境中,LS记录会受到严重的噪声污染,这可以通过自适应噪声消除(ANC)来解决。提出了一种基于最小均方(LMS)算法的ANC方法,用于在实际噪声环境下增强LS信号。在隐马尔可夫模型(HMM)的基础上,采用最小分类误差(MCE)进一步提高了LS的判别性能。实验结果证实了ANC的有效性,基于HMM-MCE的肺音识别方法优于传统的HMM-ML(最大似然法)方法。

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