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Automatic detection of wheezes by evaluation of multiple acoustic feature extraction methods and C-weighted SVM

机译:通过评估多声学特征提取方法和C加权SVM自动检测蠕虫

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This work addresses the problem of lung sound classification, in particular, the problem of distinguishing between wheeze and normal sounds. Wheezing sound detection is an important step to associate lung sounds with an abnormal state of the respiratory system, usually associated with tuberculosis or another chronic obstructive pulmonary diseases (COPD). The paper presents an approach for automatic lung sound classification, which uses different state-of-the-art sound features in combination with a C-weighted support vector machine (SVM) classifier that works better for unbalanced data. Feature extraction methods used here are commonly applied in speech recognition and related problems thanks to the fact that they capture the most informative spectral content from the original signals. The evaluated methods were: Fourier transform (FT), wavelet decomposition using Wavelet Packet Transform bank of filters (WPT) and Mel Frequency Cepstral Coefficients (MFCC). For comparison, we evaluated and contrasted the proposed approach against previous works using different combination of features and/or classifiers. The different methods were evaluated on a set of lung sounds including normal and wheezing sounds. A leave-two-out per-case cross-validation approach was used, which, in each fold, chooses as validation set a couple of cases, one including normal sounds and the other including wheezing sounds. Experimental results were reported in terms of traditional classification performance measures: sensitivity, specificity and balanced accuracy. Our best results using the suggested approach, C-weighted SVM and MFCC, achieve a 82.1% of balanced accuracy obtaining the best result for this problem until now. These results suggest that supervised classifiers based on kernel methods are able to learn better models for this challenging classification problem even using the same feature extraction methods.
机译:这项工作解决了肺部声音分类的问题,特别是区分喘息和正常声音的问题。喘息声检测是将肺部声音与呼吸系统的异常相关的重要步骤,通常与结核病或另一种慢性阻塞性肺部疾病(COPD)相关。本文介绍了一种自动肺部声音分类的方法,它使用不同的最先进的声音功能与C重量支持向量机(SVM)分类器结合使用,其适用于不平衡数据。这里使用的特征提取方法通常在语音识别和相关问题中应用于从原始信号捕获最具信息丰富的光谱内容。评估方法是:傅里叶变换(FT),使用小波分组变换滤波器(WPT)和MEL频率谱系数(MFCC)的小波分解。为了比较,我们使用不同的特征和/或分类器的不同组合评估和对比以前的作品的提出方法。在一组肺部声音中评估了不同的方法,包括正常和喘息的声音。使用休假次外横验验证方法,在每个折叠中选择作为验证设置了几个情况,包括正常声音,另一个包括普通声音,包括喘息声音。在传统的分类绩效措施方面报告了实验结果:敏感性,特异性和平衡的准确性。我们使用所建议的方法,C加权SVM和MFCC的最佳结果,达到82.1%的平衡准确性,直到现在地获得了这个问题的最佳结果。这些结果表明,即使使用相同的特征提取方法,基于内核方法的受监管分类器能够学习这种具有挑战性的分类问题的更好模型。

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