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国内主流移动视觉搜索工具的比较研究 被引量:5

A Comparative Research of Domestic Mainstream Mobile Visual Search Tools
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摘要 近年来移动视觉搜索作为重要的信息获取方式得到快速发展,学术界和产业界都对这一新兴搜索模式给予了极大关注,然而目前缺少对国内移动视觉搜索工具的分析研究。文章首先对移动视觉搜索这一概念的来源及演化进行简要概述,并列举国内主流的移动视觉搜索工具产品,从功能实现维度划分为三个大类,主要从搜索架构和运营模式两个方面对不同类别工具进行对比分析。通过对比研究获得各类工具之间的共性和差异,并总结移动视觉搜索工具的场景化、移动化、个性化三大特征,以期为移动视觉搜索工具的研发与改进提供新的方向和思路,并为研究者提供参考和帮助。 In recent years, mobile visual search, as an important way to obtain information, has developed rapidly. Academics and industry have paid great attention to this. However, there is rare research about domestic MVS tools at present. This paper gives a brief overview of the source and evolution of MVS and lists the domestic mobile visual search tools, which are divided into three categories from the functional dimension. The authors select the search architecture and operating mode to investigate differences among groups. Through the comparative study of the various types of tools, this paper summarizes three characteristics and looks forward to providing new directions and ideas for the development and improvement of MVS tools, meanwhile offering consultation and assistance to other researchers.
出处 《图书馆学研究》 CSSCI 2017年第21期65-71,44,共8页 Research on Library Science
基金 国家社会科学基金重大项目"面向大数据的数字图书馆移动视觉搜索机制及应用研究"(项目编号:15ZDB126)的研究成果之一
关键词 移动视觉搜索 MVS 搜索工具 对比研究 mobile visual search MVS search tools comparative research
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