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Early human vocalization development: A collection of studies utilizing automated analysis of naturalistic recordings and neural network modeling.

机译:早期人声开发:利用自然记录的自动分析和神经网络建模进行的研究的集合。

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摘要

Understanding early human vocalization development is a key part of understanding the origins of human communication. What are the characteristics of early human vocalizations and how do they change over time? What mechanisms underlie these changes? This dissertation is a collection of three papers that take a computational approach to addressing these questions, using neural network simulation and automated analysis of naturalistic data.;The first paper uses a self-organizing neural network to automatically derive holistic acoustic features characteristic of prelinguistic vocalizations. A supervised neural network is used to classify vocalizations into human-judged categories and to predict the age of the child vocalizing. The study represents a first step toward taking a data-driven approach to describing infant vocalizations. Its performance in classification represents progress toward developing automated analysis tools for coding infant vocalization types.;The second paper is a computational model of early vocal motor learning. It adapts a popular type of neural network, the self-organizing map, in order to control a vocal tract simulator and in order to have learning be dependent on whether the model’s actions are reinforced. The model learns both to control production of sound at the larynx (phonation), an early-developing skill that is a prerequisite for speech, and to produce vowels that gravitate toward the vowels in a target language (either English or Korean) for which it is reinforced. The model provides a computationally-specified explanation for how neuromotor representations might be acquired in infancy through the combination of exploration, reinforcement, and self-organized learning.;The third paper utilizes automated analysis to uncover patterns of vocal interaction between child and caregiver that unfold over the course of day-long, totally naturalistic recordings. The participants include 16- to 48-month-old children with and without autism. Results are consistent with the idea that there is a social feedback loop wherein children produce speech-related vocalizations, these are preferentially responded to by adults, and this contingency of adult response shapes future child vocalizations. Differences in components of this feedback loop are observed in autism, as well as with different maternal education levels.
机译:了解早期人类发声的发展是理解人类交流起源的关键部分。早期人类发声的特征是什么,它们会随着时间变化吗?这些变化背后的机制是什么?本文是三篇论文的集合,这些论文采用计算方法来解决这些问题,方法是使用神经网络模拟和自然数据的自动分析。;第一篇论文是使用自组织神经网络自动得出前语言发声特征的整体声学特征。监督神经网络用于将发声分类为人为判断的类别,并预测发声儿童的年龄。该研究是迈向采用数据驱动的方法描述婴儿发声的第一步。它的分类性能代表了在开发用于对婴儿发声类型进行编码的自动分析工具方面的进展。;第二篇论文是早期发声运动学习的计算模型。它采用了一种流行的神经网络,即自组织图,以控制声道模拟器,并使学习取决于模型的动作是否得到加强。该模型不仅学习控制在喉部发声的声音(发声),这是语音的先决条件,而且还学习了以其目标语言(英语或韩语)向元音吸引的元音。被加强。该模型提供了计算指定的解释,说明如何通过探索,强化和自组织学习的结合在婴儿期获得神经运动表征。第三篇论文利用自动化分析揭示了儿童和看护者之间正在发生的声音互动模式在为期一天的完全自然主义录音过程中。参加者包括16岁至48个月有或没有自闭症的儿童。结果与以下想法一致:存在一个社会反馈回路,其中儿童产生与语音相关的发声,这些声音优先受到成年人的响应,而成年人的这种偶然性会影响未来的儿童发声。在自闭症中以及在不同的孕产妇教育水平中都观察到了这种反馈回路的组成部分的差异。

著录项

  • 作者

    Warlaumont, Anne S.;

  • 作者单位

    The University of Memphis.;

  • 授予单位 The University of Memphis.;
  • 学科 Health Sciences Speech Pathology.;Psychology Cognitive.;Artificial Intelligence.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 116 p.
  • 总页数 116
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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