利用隐马尔可夫模型实现语音到文本的转换

A. Elakkiya, K. Surya, Konduru Venkatesh, S. Aakash
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引用次数: 4

摘要

深度学习是革命性的,它可以将口语转化为文本,让计算机以与人类读者相同的意图阅读。其基本思想是将人类语言作为数据提供给智能系统,这些数据可用于各个领域。语音到文本合成器是一种软件,它可以使用数字信号处理(DSP)算法将音频文件转换为文本,该算法分析和处理音频文件中的语音信号。语音到文本(STT)的目标是将来自用户或计算机的音频输入转换为可读的文本。提出用隐马尔可夫模型(HMM)方法对STT进行变换。语音-文本合成器的开发对于视觉障碍的人来说将是一个巨大的优势,它将使阅读冗长的文本变得更加容易。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of Speech to Text Conversion Using Hidden Markov Model
Deep learning is revolutionary when used to transcribe spoken language into text that computers can read with the same intent as human readers. The fundamental idea is to give intelligent systems with human language as data that may be utilized in various domains. A speech-to-text synthesizer is a piece of software that can convert an audio file into text using Digital Signal Processing (DSP) algorithms that analyze and process the speech signal in the audio file. The objective of Speech To Text (STT) is to convert audio input from a user or computer into readable text. The STT is proposed to be transformed using the Hidden Markov Model (HMM) method. The development of a speech-to-text synthesizer will be a tremendous advantage for the visually handicapped and will make reading lengthy texts much easier.
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