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Concepts learning with fuzzy clustering and relevance feedback

机译:具有模糊聚类和相关性反馈的概念学习

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In recent years feedback approaches have been used in relating low-level image features with concepts to overcome the subjective nature of the human image interpretation. Generally, in these systems when the user starts with a new query, the entire prior experience of the system is lost. In this paper, we address the problem of incorporating prior experience of the retrieval system to improve the performance on future queries. We propose a semi-supervised fuzzy clustering method to learn class distribution (meta knowledge) in the sense of high-level concepts from retrieval experience. Using fuzzy rules, we incorporate the meta knowledge into a probabilistic feature relevance feedback approach to improve the retrieval performance. Results on synthetic and real databases show that our approach provides better retrieval precision compared to the case when no retrieval experience is used.
机译:近年来,已经使用反馈方法来将低级图像特征与概念相关联,以克服人类图像解释的主观性质。通常,在这些系统中,当用户以新查询开始时,系统的全部先前经验都会丢失。在本文中,我们解决了合并检索系统的先前经验以提高未来查询性能的问题。我们提出一种半监督模糊聚类方法,从检索经验的高级概念意义上学习类分布(元知识)。使用模糊规则,我们将元知识合并到概率特征相关性反馈方法中,以提高检索性能。综合数据库和真实数据库的结果表明,与没有使用检索经验的情况相比,我们的方法提供了更好的检索精度。

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