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Segmentation of voiced newborns' cry sounds using wavelet packet based features

机译:使用基于小波包的特征对有声新生儿的哭声进行分割

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This paper proposes a method for the segmentation of newborn's cry signals recorded in real conditions using the Teager-Kaiser energy operator (TKEO). Based on the wavelet packet analysis, the audio signals are divided into different frequency channels, and then the TKEO and the energy are estimated within each band. The Hidden Markov Models have been used as a classification tool to distinguish the voiced cry parts from the irrelevant acoustic activities that compose the audio signals. The proposed method divided the audio signal containing newborns' cry sounds into different periods showing the audible Expiration and Inspiration of the cry. Different levels of wavelet packet transform have been used to verify the performance of the proposed method on crying signals segmentation and have shown that based on wavelet packet decomposition, the TKEO measure is more effective than the traditional energy measure in detecting important parts of cry signal in a very noisy environment. The proposed features have shown to achieve an accuracy rate of 84.08 %.
机译:本文提出了一种使用Teager-Kaiser能量算子(TKEO)分割真实情况下记录的新生儿啼哭信号的方法。基于小波包分析,将音频信号分为不同的频率通道,然后在每个频带内估计TKEO和能量。隐马尔可夫模型已用作分类工具,以区分发声的哭声部分和构成音频信号的无关声音活动。所提出的方法将包含新生儿哭声的音频信号分为不同的时间段,以显示可听见的呼气声和呼气声。已经使用不同级别的小波包变换来验证所提出的方法在哭声信号分割方面的性能,并且表明基于小波包分解,TKEO措施比传统的能量措施在检测哭声信号的重要部分方面更为有效。一个非常嘈杂的环境。建议的功能已显示出达到84.08%的准确率。

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