基于Python编程的树莓派灯光控制语音识别

P. Netinant, Krairat Arpabusayapan, Meennapa Rukhiran
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引用次数: 2

摘要

面向残疾人和老年人的物联网在各个领域得到实质性发展。语音识别是一项极具挑战性的技术,成本效益的人类接触,沟通和控制。为了对语言命令提供更完整的解释,特别是对非英语母语者和具有音调变化的语言,已经对语音识别系统进行了许多实验。本文概述了基于Raspberry pi的语音命令系统的开发。该系统是使用Python开发和安装的,它使用Google语音识别API作为语音到文本的转换器。我们的光控系统的语音识别系统能够通过USB麦克风接收语音命令。实验结果比较了泰语和英语订单的灯光控制精度,使用的是泰语老年人。根据建议的方法,泰语语音比英语语音识别得更准确。这些惊人的发现驳斥了语音识别算法可以促进物联网发展的概念。然而,该系统在识别残疾人和老年人语音方面的准确性应该与该国的民族或土著语言进行权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Speech Recognition for Light Control on Raspberry Pi Using Python Programming
The Internet of Things has been substantially developed for disabled and elderly persons in various domains. Speech recognition is an extremely challenging technique for cost-effective human contact, communication, and control. Numerous experiments have been undertaken on voice recognition systems in order to provide a more complete explanation of language commands, particularly for non-native English speakers and languages with tone variations. This article outlines the development of a Raspberry Pi-based spoken command system. The system was developed and installed using Python, and it makes use of the Google Speech Recognition API as a speech-to-text converter. Our light control system's speech recognition system is capable of receiving voice commands via a USB microphone. The experimental results compare the accuracy of light control for Thai and English orders utilizing individuals who are Thai elderly speakers. Thai speech is recognized more precisely than English speech by the suggested approach. These startling findings refute the concept that speech recognition algorithms can boost the growth of the Internet of Things. However, the system's accuracy in recognizing speech for disabled and elderly users should be weighed against the country's national or indigenous languages.
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