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Rich Representation Spaces: Benefits in Digital Auscultation Signal Analysis

机译:丰富的代表空间:数字听诊信号分析中的益处

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When developing automated techniques for analysis of auscultation signals, the choice of a proper representational space that characterizes all attributes of interest in the signal is of paramount importance. In this paper, we investigate different feature representation methods and their benefits in distinguishing auscultation sounds. The importance of choosing an appropriate feature space is explored and validated using trained classifiers that distinguish between normal and abnormal respiratory sounds. Findings of this study are two-fold: i) an increased dimensionality in the feature space can provide a more complete and distinct representation of the delicate breath sounds and ii) dimensionality of the feature space alone is not enough to fully capture discriminative attributes: an informative feature space is even more crucial for extracting accurate, disease-specific characteristics of respiratory sounds.
机译:当开发用于分析听诊信号的自动化技术时,可以选择表征信号中所有感兴趣属性的适当代表性空间是至关重要的。在本文中,我们调查不同的特征表示方法及其在区分听诊声音时的益处。使用培训的分类器来探讨和验证选择合适的特征空间的重要性,这些分类器区分正常和异常呼吸声。本研究的结果是两倍:i)特征空间中的增加的维度可以提供单独的特征空间的微妙呼吸声和II)的更完整且不同的表示,而不是完全捕获辨别属性的不足之处信息特征空间对于提取准确,疾病特异性特征更为至关重要。

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