语音到文本转换概述

Kartik Aggarwal
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引用次数: 0

摘要

随着科学技术的发展,语音到文本(STT)自动转换系统已经问世。该系统可将口语转换成可视化阅读的文字。听力有问题的人可以利用这种技术进行其他方式的交流,包括理解语音交流和利用视觉能力听从指示。在某些情况下,看比听更有力量,特别是在远距离交流中;因此,在这种情况下,语音到文本的转换至关重要。机器学习的出现是二十一世纪最引人入胜的发展之一。它已从 20 世纪 40 年代的神经学研究发展成为类似人类创造的人工智能。神经网络是复杂结构的集合,是机器学习的基础。当与优化技术相结合时,这些网络就能模仿人脑中神经元的行为,让计算机从经验中学习。在这里,我们探讨了此类结构的众多潜在用途之一--在一项原创研究中分析声乐表现。特别是,我们剖析了语音识别系统,以确定其内部工作原理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Overview of Speech-To-Text Conversion
As a result of developments in science and technology, an automatic speech-to-text (STT) conversion system has been available. This system converts spoken words into text that can be read visually. People with trouble hearing may use this technology to communicate in other ways, including understanding voice communication and being able to follow directions using their visual abilities. There are instances when seeing something is more powerful than listening to something, particularly in long-distance communication; thus, speech-to-text conversion is crucial in situations like these. One of the fascinating developments to occur in the twenty-first century is the advent of machine learning. It has evolved from its roots in neurology studies conducted in the 1940s into something like artificial intelligence humans have created. Neural networks, a collection of complex structures, are the basis of machine learning. When combined with optimization techniques, these networks mimic the behaviour of neurons in the human brain and allow a computer to learn from its experiences. Here we explore one of many potential uses for such structures - the analysis of vocal performance in an original study. In particular, we dissect voice recognition systems to determine their inner workings.
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