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Mel-Frequency Cepstrum Coefficients Extraction from Infant Cry for Classification of Normal and Pathological Cry with Feed-forward Neural Networks

机译:母亲谱系的母谱系数从婴儿呼声提取正常和病理哭泣分类的馈线神经网络

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This work presents the development of an automatic recognition system of infant cry, with the objective to classify two types of cry: normal and pathological cry from deaf babies. In this study, we used acoustic characteristics obtained by the Mel-Frequency Cepstrum technique and as a classifier a feed-forward neural network that was trained with several learning methods, resulting better the Scaled Conjugate Gradient algorithm. Current results are shown, which, up to the moment, are very encouraging with an accuracy up to 97.43%.
机译:这项工作提出了婴儿哭泣自动识别系统的发展,目的是对两种类型的哭泣进行分类:来自聋婴儿的正常和病理哭泣。在这项研究中,我们使用了通过熔融频率谱技术获得的声学特性,作为分类器的馈电神经网络,其具有若干学习方法训练,从而更好地缩放共轭梯度算法。显示目前的结果,直到此刻,这非常令人鼓舞,精度高达97.43%。

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