实现被模仿:元音映射,发音更清晰

K. Miura, Y. Yoshikawa, M. Asada
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引用次数: 9

摘要

在之前的研究中,照顾者和婴儿(机器人)之间元音模仿学习的方法是假设机器人可以将照顾者的话语分割到其音素类别中,在这个类别中,照顾者总是模仿机器人的话语。然而,在实际情况下,护理人员并不总是模仿机器人的话语,机器人也没有音素类别(没有分割能力)。本文提出了一种解决这些问题的方法,即弱监督的自动调节学习,即利用未开发的分类器对动作和数据进行主动选择。为了解决不总是模仿的问题,应用了一种弱监督学习方法,能够处理不完全分割的样本(不完全模仿的声音)。此外,对模仿声音的调节分类器进行递归应用,以选择良好的声音原语,并对看护人模仿的声音进行分割,从而提高分类器本身的性能。给出了仿真结果,并提出了今后需要解决的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Realizing being imitated: Vowel mapping with clearer articulation
The previous approach to vowel imitation learning between a caregiver and an infant (robot) has assumed that the robot can segment the caregiverpsilas utterance into its phoneme category, where the caregiver always imitates the robot utterance. However, in real situations, the caregiver does not always imitate the robot utterance, nor the robot does have the phoneme category (no segmentation capability). This paper presents a method to solve these issues, a weakly-supervised learning along with auto-regulation, that is active selection of action and data with underdeveloped classifier. To cope with not-always imitation problem, a weakly-supervised learning method is applied that is capable to handle incompletely segmented samples (not perfectly imitated voices). Further, the regulation classifier of the imitated voices is recursively applied in order to select good vocal primitives and to segment caregiverpsilas imitated voices that improve the performance of the classifier itself. The simulation results are shown and the future issues are given.
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