音系学的计算方法:语音识别与合成的进展

Aulia Yunus, Novi Yanti, Yani lubis
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引用次数: 0

摘要

本文探讨了音韵学的计算方法领域,特别关注最近流行和语音合成的增加。音韵学作为语言学的一个部门,研究对声音的观察及其在语言中的作用。最近在这一领域的改进导致了准确性和效率的重大提高,朝着深度识别策略与循环神经网络(rnn)和卷积神经网络(cnn)的整合。这些模型已经测试了捕捉复杂语音模式和修饰计算机语音信誉结构的整体性能的能力。这些进步已经在多个领域看到了软件包,例如虚拟助手、文本到语音结构和语言习得工具。本文着眼于音韵学中使用的主要计算过程,以及基于特征的表示、基于规则的模式和统计方法。它探讨了与音位评估相关的苛刻情况,包括音位分割,发音变体和语言特定问题。此外,本文还讨论了将语音知识与设备学习策略相结合,从而能够开发鲁棒且正确的语音识别和合成系统。与往常一样,这项研究代表了从计算方法到音系学的显著进步,特别是在语音识别和合成的地理领域。技术和语言洞察力的结合提高了口语处理的准确性、自然度和效率。这些增强为增强人机交互、语言识别和许多其他依赖于基于语音的技术的软件包提供了新的机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computational Approaches to Phonology: Advances in Speech Recognition and Synthesis
This article explores the field of computational approaches to phonology, with a particular focus on recent increases in popularity and speech synthesis. Phonology, as a department of linguistics, deals with the observation of sounds and their work in language. Recent improvements in this area have resulted in major improvements in accuracy and efficiency, towards the integration of deep recognition strategies together with recurrent neural networks (RNNs) and convolutional neural networks (CNNs). the models have tested the ability to capture complex phonetic patterns and decorate the overall performance of computerized speech reputation structures. These advances have seen packages in multiple domains, such as virtual assistants, text-to-speech structures, and language acquisition tools. This article looks at the main computational procedures used in phonology, along with characteristic-based representations, rule-based modes, and statistical methods. It explores demanding situations related to phonological evaluation, which include phoneme segmentation, pronunciation variants, and language-specific problems. In addition, this paper discusses mixing phonological knowledge with device learning strategies, which enables the development of robust and correct speech recognition and synthesis systems. As usual, this research represents remarkable advances from computational methods to phonology, particularly in the geographical area of speech recognition and synthesis. the combination of technology and linguistic insights has increased the accuracy, naturalness, and efficiency in processing spoken language. These enhancements open up new opportunities to enhance human-pc interaction, language recognition, and many other packages that rely on speech-based technologies.
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