A Semantic Query Interpreter framework by using knowledge bases for image search and retrieval

N. Aslam, Irfanullah, Jonathan Loo, M. Loomes, Roohullah
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引用次数: 5

Abstract

Due to the ubiquitous ness of the digital media including broadcast news, documentary videos, meeting, movies, etc. and the progression in the technology and the decreasing outlay of the storage media leads to an increase in the data production. This explosive proliferation of the digital media without appropriate management mimics its exploitation. Presently, the multimedia search and retrieval are an active research dilemma among the academia and the industry. The online data repositories like Google, YouTube, Flicker, etc. provides a gigantic bulk of information but findings and accessing the data of interest becomes difficult. Due to this explosive proliferation, there is a strong urge for the system that can efficiently and effectively interpret the user demand for searching and retrieving the relevant information. In order to cope with these problems, we are proposing a novel technique for automatic query interpretation known as the Semantic Query Interpreter (SQI). SQI interprets the user query both lexically and semantically by using open source knowledge bases i.e. WordNet and ConceptNet. Effectiveness of the proposed method is explored on the open-benchmark image data set the LabelMe. Experimental results manifest that SQI shows substantial rectification over the traditional ones.
一个基于知识库的语义查询解释器框架,用于图像搜索和检索
由于广播新闻、纪录片、会议、电影等数字媒体的无处不在,加上技术的进步和存储媒体费用的减少,导致了数据产量的增加。这种没有适当管理的数字媒体的爆炸性增长模仿了对其的利用。目前,多媒体检索是学术界和业界的一个活跃的研究难题。像Google, YouTube, Flicker等在线数据存储库提供了大量的信息,但发现和访问感兴趣的数据变得困难。由于这种爆炸性的扩散,人们强烈要求系统能够高效、有效地解释用户搜索和检索相关信息的需求。为了解决这些问题,我们提出了一种新的自动查询解释技术,即语义查询解释器(Semantic query Interpreter, SQI)。SQI通过使用开源知识库(如WordNet和ConceptNet)从词汇和语义上解释用户查询。在开放基准图像数据集LabelMe上验证了该方法的有效性。实验结果表明,SQI比传统方法有较大的改进。
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