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多媒体互联网信息搜索技术探析 被引量:1

Review for Multimedia Internet Information Search Technique
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摘要 近几十年来,互联网技术的飞速发展加快了信息流通的速度,现代社会已经进入到信息时代。能够利用互联网技术进行信息搜索,已经成为现代人必备的基本素质和能力。手机、平板电脑、互动电视等多媒体技术的发展,使得多媒体互联网搜索技术在社会各行各业中广泛应用,极大地改变了社会的信息流通状况。目前人们越来越多地利用互联网信息资源来满足自身信息的需求,因此,互联网信息检索日益发展成为社会的主流。主要介绍互联网信息搜索引擎的共组原理以及多媒体互联网的信息搜索技术,为相关研究人员提供参考。 In recent years, the rapid development of the Internet technology accelerates the information circulation speed, modern society has entered the information era. To search for information using the Internet technology, has become a necessary basic quality and ability. The development of mobile phone, tablet computer, interactive TV, muhimedia technology, multimedia Internet search technology is widely used in all fields of society, has greatly changed the circulation of information society. At present, the Internet information resources by more and more people to meet their information needs, therefore, has developed into the mainstream of society and the Internet information retrieval. This paper mainly introduces the principle of total group of Internet information search engine and multimedia Internet information searching technology, provide a reference for the related researchers.
作者 李琳
出处 《电脑开发与应用》 2013年第6期31-33,共3页 Computer Development & Applications
关键词 互联网 多媒体 信息搜索 技术 internet, multimedia technology, information search, techique
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