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食品药品广播电视舆情监测系统设计与实现 被引量:1

Design and Implementation of Public Opinion Monitoring System for Food and Drug Broadcasting
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摘要 本文介绍的食品药品安全舆情监测系统运用虚拟机集群和云存储技术实时采集和存储数据,并基于因素图分析技术快速搜索食品药品舆情信息,准确定位、翻译、审核和保存,实现了对广播电视媒体中的食品药品安全舆情信息的智能化分析。系统平台为食品药品舆情监测及应急处置提供了技术支撑,提高了工作效率和监管水平。 In this paper, virtual machine cluster and cloud storage technology are used to collect and store data in real time. Based on phoneme graph analysis, food and drug public opinions are searched, located, translated, reviewed and saved. This system provides an intelligent analysis of public opinion about food and drug safety in radio and television. The system provides technical support for public opinion monitoring and emergency treatment about food and drug safety, and helps to improve work efficiency and supervision level.
出处 《广播与电视技术》 2018年第2期109-111,共3页 Radio & TV Broadcast Engineering
关键词 食品药品 广播电视 舆情监测 语音识别 虚拟机 Food and drug, Radio & TV, Public opinion, Speech recognition, Virtual machine
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