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Data-driven automated acoustic analysis of human infant vocalizations using neural network tools

机译:使用神经网络工具的数据驱动的人类婴儿发声的自动声学分析

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摘要

Acoustic analysis of infant vocalizations has typically employed traditional acoustic measures drawn from adult speech acoustics, such as f0, duration, formant frequencies, amplitude, and pitch perturbation. Here an alternative and complementary method is proposed in which data-derived spectrographic features are central. 1-s-long spectrograms of vocalizations produced by six infants recorded longitudinally between ages 3 and 11 months are analyzed using a neural network consisting of a self-organizing map and a single-layer perceptron. The self-organizing map acquires a set of holistic, data-derived spectrographic receptive fields. The single-layer perceptron receives self-organizing map activations as input and is trained to classify utterances into prelinguistic phonatory categories (squeal, vocant, or growl), identify the ages at which they were produced, and identify the individuals who produced them. Classification performance was significantly better than chance for all three classification tasks. Performance is compared to another popular architecture, the fully supervised multilayer perceptron. In addition, the network’s weights and patterns of activation are explored from several angles, for example, through traditional acoustic measurements of the network’s receptive fields. Results support the use of this and related tools for deriving holistic acoustic features directly from infant vocalization data and for the automatic classification of infant vocalizations.
机译:婴儿发声的声学分析通常采用从成人语音声学中得出的传统声学测量方法,例如f0,持续时间,共振峰频率,幅度和音高扰动。这里提出了一种替代和补充的方法,其中以数据为基础的光谱特征是中心。使用由自组织图和单层感知器组成的神经网络,分析了在3到11个月之间纵向记录的六个婴儿产生的1-s长发声声谱图。自组织图获取一组整体的,数据派生的光谱接收场。单层感知器接收自组织的地图激活作为输入,并经过训练以将话语分类为语言前的语音类别(尖叫,发声或咆哮),识别产生它们的年龄以及识别产生它们的个人。对于所有三个分类任务,分类性能明显好于机会。将性能与另一种流行的体系结构,即完全监督的多层感知器进行比较。此外,还从多个角度探讨了网络的权重和激活方式,例如,通过对网络接收场的传统声学测量。结果支持使用此工具和相关工具直接从婴儿发声数据中导出整体声学特征,并自动对婴儿发声进行分类。

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