作者
Luis Mendes, IM Vogiatzis, Eleni Perantoni, Evangelos Kaimakamis, Ioanna Chouvarda, Nicos Maglaveras, Venetia Tsara, C Teixeira, Paulo Carvalho, Jorge Henriques, Rui Pedro Paiva
发表日期
2015/8/25
研讨会论文
2015 37th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC)
页码范围
5581-5584
出版商
IEEE
简介
In this work thirty features were tested in order to identify the best feature set for the robust detection of wheezes. The features include the detection of the wheezes signature in the spectrogram space (WS-SS) and twenty-nine musical features usually used in the context of Music Information Retrieval. The method proposed to detect the signature of wheezes imposes a temporal Gaussian regularization and a reduction of the false positives based on the (geodesic) morphological opening by reconstruction operator. Our dataset contains wheezes, crackles and normal breath sounds. Four selection algorithms were used to rank the features. The performance of the features was asserted having into account the Matthews correlation coefficient (MCC). All the selection algorithms ranked the WS-SS feature as the most important. A significant boost in performance was obtained by using around ten features. This …
引用总数
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L Mendes, IM Vogiatzis, E Perantoni, E Kaimakamis… - 2015 37th Annual International Conference of the IEEE …, 2015