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Time-shared channel identification for adaptive noise cancellation in breath sound extraction

机译:分时信道识别,用于呼吸音提取中的自适应噪声消除

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摘要

Noise artifacts are one of the key obstacles in applying continuous monitoring and computer-assisted analysis of lung sounds.Traditional adaptive noise cancellation (ANC) methodologies work reasonably well when signal and noise are stationary and independent.Clinical lung sound auscultation encounters an acoustic environment in which breath sounds are not stationary and often correlate with noise.Consequently,capability of ANC becomes significantly compromised.This paper introduces a new methodology for extracting authentic lung sounds from noise-corrupted measurements.Unlike traditional noise cancellation methods that rely on either frequency band separation or signal/noise independence to achieve noise reduction,this methodology combines the traditional noise canceling methods with the unique feature of time-split stages in breathing sounds.By employing a multi-sensor system,the method first employs a high-pass filter to eliminate the off-band noise,and then performs time-shared blind identification and noise cancellation with recursion from breathing cycle to cycle.Since no frequency separation or signal/noise independence is required,this method potentially has a robust and reliable capability of noise reduction,complementing the traditional methods.
机译:噪声伪影是应用连续监测和计算机辅助分析肺部声音的主要障碍之一。当信号和噪声稳定且独立时,传统自适应噪声消除(ANC)方法工作得相当好。临床肺部听诊在声学环境中遇到声学环境。因此,ANC的功能受到严重损害。本文介绍了一种从噪声损坏的测量中提取真实肺音的新方法。与传统的消噪方法不同,该方法依赖于任一频段分离或信号/噪声独立性以实现降噪,此方法结合了传统的噪声消除方法和呼吸声音中时间分割阶段的独特功能。通过采用多传感器系统,该方法首先采用高通滤波器消除了噪声。带外噪声,然后执行分时盲d识别和消除噪声,并从一个呼吸循环到另一个循环递归。由于不需要频率分离或信号/噪声独立性,因此该方法潜在地具有强大而可靠的降噪能力,是对传统方法的补充。

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