在模糊CBIR系统中学习人类感知概念

Chih-Yi Chiu, Hsin-Chih Lin, Shin-Nine Yang
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引用次数: 5

摘要

在本研究中,我们提出了一个基于内容的图像检索(CBIR)的模糊逻辑框架,以实现个性化和更好的检索结果。在此框架下,语义缺口、感知主观性等典型问题得以缓解。主要包括三个组成部分:(1)形象表征;(2)查询表达式;(3)特征匹配,并给出了解决方案。对于图像的表示,我们利用模糊隶属函数建立了从低级数值特征到高级语言术语的映射。对于查询表达式,我们定义了一种查询描述语言,该语言为用户提供了灵活的查询表达式,以便在不同的语义层次上指定他们的信息需求。对于特征匹配,我们的CBIR系统可以构建一个独特的个性化相似度函数,根据用户的查询和他/她的偏好来衡量查询与图像之间的相似度。实验结果表明了该系统的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning human perceptual concepts in a fuzzy CBIR system
In this study, we propose a fuzzy logic framework for content-based image retrieval (CBIR) to achieve the goal of personalization and better retrieval results. Under the proposed framework, typical problems in CBIR such as the semantic gap and the perception subjectivity can be alleviated. Three major components, including: (1) image representation; (2) query expression; and (3) feature matching, are discussed and solutions are introduced. For the image representation, we formulate a mapping from low-level numerical features to high-level linguistic terms by the use of fuzzy membership functions. For the query expression, we define a query description language that provides a flexible query expression for users to specify their information need at various semantic levels. For the feature matching, our CBIR system can construct a unique personalized similarity function that measures similarity between the query and an image according to the user's query and his/her preference. Experimental results are given to show the effectiveness of our CBIR system.
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