期刊文献+

基于网页关联特征的互联网图像自动标注系统发展刍议

Internet image associated web-based features automatic tagging system development Discussion
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摘要 在互联网发展的背景下,图像的自动标注和识别成为图像信息检索的重要实现方法,通过图像产生的视觉内容通过计算机和互联网形成与图像对应的关键词,从而实现对图像内容的标注,为检索的实现奠定基础。本文在互联网关联性的特征下来探讨图像自动标注系统发展的相关问题。 In the context of the development of the Internet, the image automatic annotation and identification of important implementation of the image information retrieval method, visual content produced by the image formed by the computer and the Internet with the image corresponding to the keyword, in order to achieve marked on the image content, for retrieving realization of the foundation. In this paper, the characteristics of the Internet correlation down to explore issues related to automatic image annotation system development.
作者 段湘宁
出处 《电子测试》 2013年第3期111-112,共2页 Electronic Test
关键词 网页关联性 图像 自动标注系统 web association images auto-tagging system
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