Dunstan Baby Language Classification with CNN

Costin Andrei Bratan, Mirela Gheorghe, Ioan Ispas, E. Franti, M. Dascalu, S. Stoicescu, Ioana Rosca, Florentina Gherghiceanu, Doina Dumitrache, L. Nastase
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引用次数: 2

Abstract

Several methods were reported in the scientific literature for the classification of the infant cries, in order to automatically detect the need behind their tears and help the parents and caretakers. In the same scope, this paper has an original approach in which the sounds that precede the cry are used. Such sounds can be considered primitive words and are classified according to the “Dunstan Baby Language”. The paper verifies the universal baby language hypothesis starting from the research reported in a previous article. A CNN architecture trained with recordings of babies from Australia was used for classifying the audio material coming from Romanian babies. It was an attempt to see what happens should the participants belong to a different cultural landscape. The database loaded with the sounds made by Romanian babies was labelled by doctors in the maternity hospitals and two Dunstan experts, separately. Finally, the results of the CNN automatic classification were compared to those obtained by the Dunstan coaches. The conclusions have proved that Dunstan language is universal.
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CNN的邓斯坦婴儿语言分类
科学文献中报道了几种对婴儿哭声进行分类的方法,以便自动发现他们哭泣背后的需求,并帮助父母和看护人。在同样的范围内,这篇论文有一个原创的方法,在哭声之前的声音被使用。这些声音可以被认为是原始的单词,并根据“邓斯坦婴儿语言”进行分类。本文从前人的研究入手,验证了婴儿通用语言假说。一个经过澳大利亚婴儿录音训练的CNN架构被用来对来自罗马尼亚婴儿的音频材料进行分类。这是一个尝试,看看如果参与者属于不同的文化景观会发生什么。这个包含罗马尼亚婴儿声音的数据库由妇产医院的医生和邓斯坦的两位专家分别标记。最后,将CNN自动分类的结果与Dunstan教练员得到的结果进行比较。这些结论证明了邓斯坦语的通用性。
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