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基于语音控制的LED家居智能照明系统研究 被引量:2

Study on Intelligent Home LED Lighting System Based on Voice Control
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摘要 针对市场现有家居智能照明产品便利性不足、操作不够人性化的问题,文章介绍了一套具备语音识别控制、触摸屏交互式控制等功能的LED家居智能照明系统。和传统的照明系统相比,该系统操作方便,实用性强,更适合高档家居智能照明市场。 Many existing intelligent home lighting products are not convenient to use. To address this issue, this paper introduces an intelligent home LED lighting system based on voice control. This lighting system can be operated either through speech recognition control or by a color touch screen as it's interactive console. Compared with conventional intelligent lighting system, the proposed system is more convenient and more user friendly. Therefore, the proposed system is quite suitable for high end intelligent home lighting market.
作者 陈越
出处 《无线互联科技》 2016年第9期21-,28,共2页 Wireless Internet Technology
基金 中山市科技计划项目 项目名称:基于语音控制的LED家居智能照明系统 项目编号:2014A2FC265
关键词 语音识别 智能照明 LED speech recognition intelligent lighting LED
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