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Performance evaluation and enhancement of lung sound recognition system in two real noisy environments.

机译:在两个实际嘈杂环境中评估和增强肺部声音识别系统的性能。

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摘要

This study investigates the problems associated with lung sound recognition under noisy conditions. Firstly, the effects of noise on the lung sound feature representation and the classification performance are analyzed. Two kinds of feature representations, autoregressive and mel-frequency cepstral coefficients, are used to characterize the lung sound signals. Dynamic time warping is used to categorize the lung sounds to one of the three: normal, wheezes, or crackles. Our experimental results indicate that additive noise produces a mismatch between training and recognition environments and deteriorates the classification performance with a decrease in the SNR levels. In order to compensate the degrading effect of noise on the lung sound recognition, a dual sensor spectral subtraction algorithm is applied to the lung sound signals before the extraction of lung sound features. It is observed that the proposed algorithm is capable of providing adequate performance in terms of noise suppression and lung sound signal enhancement.
机译:这项研究调查了在嘈杂条件下与肺音识别相关的问题。首先,分析了噪声对肺声特征表示和分类性能的影响。自回归和梅尔频率倒谱系数这两种特征表示用于表征肺部声音信号。动态时间扭曲用于将肺部声音分类为以下三种之一:正常,喘息或,啪声。我们的实验结果表明,加性噪声会在训练和识别环境之间产生失配,并会随着SNR级别的降低而降低分类性能。为了补偿噪声对肺部声音识别的衰减作用,在提取肺部声音特征之前,将双传感器频谱减法算法应用于肺部声音信号。可以看出,所提出的算法能够在噪声抑制和肺音信号增强方面提供足够的性能。

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