图像标注与检索的集成语义框架

T. Osman, D. Thakker, Gerald Schaefer, Phil Lakin
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引用次数: 27

摘要

大多数公共图像检索引擎使用自由文本搜索机制,通常返回不准确的匹配,因为它们原则上依赖于对图像注释或周围文本中查询关键字重复的统计分析。在本文中,我们提出了一个语义支持的图像注释和检索引擎,该引擎依赖于有系统结构的本体进行图像注释,从而允许对图像内容进行更智能的推理,并随后获得更准确的结果集和更丰富的替代集,以匹配原始查询。我们的语义检索技术旨在满足商业图像采集市场在检索过程的准确性和效率方面的要求。我们还提出了通过部署高效的查询扩展技术来进一步改进检索技术的召回的努力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Integrative Semantic Framework for Image Annotation and Retrieval
Most public image retrieval engines utilise free-text search mechanisms, which often return inaccurate matches as they in principle rely on statistical analysis of query keyword recurrence in the image annotation or surrounding text. In this paper we present a semantically-enabled image annotation and retrieval engine that relies on methodically structured ontologies for image annotation, thus allowing for more intelligent reasoning about the image content and subsequently obtaining a more accurate set of results and a richer set of alternatives matchmaking the original query. Our semantic retrieval technology is designed to satisfy the requirements of the commercial image collections market in terms of both accuracy and efficiency of the retrieval process. We also present our efforts in further improving the recall of our retrieval technology by deploying an efficient query expansion technique.
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