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Methods for the extraction and classification of transient signals from noisy data - A case study in classifying sounds from the thorax.

机译:从噪声数据中提取和分类瞬态信号的方法-以胸腔声音分类为例的研究。

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摘要

The physiological origins and physical characteristics of sounds from the thorax have been reviewed briefly. This thesis presents some signal processing algorithms and classification techniques which have been developed for the extraction and classification of those sounds. In order to evaluate the recording equipment and signal processing algorithms two simulators were constructed: a laboratory simulator generating lung sounds in a variable background noise environment and a heart sound simulator written such that the generated sound was defined by a set of variables. Four conventional transformation algorithms for the transient extraction process were evaluated. Their considerable user intervention and inconsistent transformed signal led to the development of the "signal's envelope" algorithm. The signal's envelope method was used to extract transients of interest which were then used for the classification stage. It is shown that, due to the numerical nature of the features used for the classification process, the nearest neighbour clustering algorithm could not correctly classify all the extracted transients. The numerical features were therefore converted into linguistic terms and a fuzzy logic technique was developed to classify the transients. The fuzzy inference engine was robust enough to cope with the small numerical variation in features such that the correct classification was achieved. The other classification method tried was the fuzzy "min-max" clustering algorithm. This also used numerical features for the classification process and was therefore not able to classify all of the extracted transients correctly. A lung sound analyser was constructed using the signal's envelope and fuzzy inference engine. The system was able to extract and classify individual heart sounds, crackles and wheezes from recorded phonograms. In about 4% of cases, the heart sounds were so indistinct that only a partial classification was achieved. It was concluded that by using simple transducers and sophisticated signal processing and classification algorithms it was possible to construct a chest sound classifier which may be of use in a clinical environment.
机译:简要回顾了胸部声音的生理起源和物理特性。本文提出了一些信号处理算法和分类技术,这些算法和分类技术已被开发用于这些声音的提取和分类。为了评估记录设备和信号处理算法,构建了两个模拟器:实验室模拟器在可变的背景噪声环境下生成肺部声音,以及编写的心音模拟器,以使生成的声音由一组变量定义。对瞬时提取过程的四种常规转换算法进行了评估。他们的大量用户干预和不一致的转换信号导致“信号包络”算法的发展。信号的包络法用于提取感兴趣的瞬变,然后将其用于分类阶段。结果表明,由于用于分类过程的特征的数值性质,最近邻聚类算法无法正确分类所有提取的瞬变。因此,将数字特征转换为语言术语,并开发了模糊逻辑技术来对瞬态进行分类。模糊推理引擎具有足够的鲁棒性,可以应对特征的较小数值变化,从而实现正确的分类。尝试的另一种分类方法是模糊“最小-最大”聚类算法。这也将数字特征用于分类过程,因此无法正确分类所有提取的瞬变。使用信号的包络和模糊推理引擎构建了肺部声音分析器。该系统能够从记录的录音中提取和分类个人的心音,crack啪声和喘鸣声。在大约4%的情况下,心音如此模糊,以致仅实现了部分分类。结论是,通过使用简单的换能器以及复杂的信号处理和分类算法,可以构建在临床环境中可能有用的胸部声音分类器。

著录项

  • 作者

    Tran, Tuan;

  • 作者单位
  • 年度 1994
  • 总页数
  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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