Fighting the Semantic Gap on CBIR Systems through New Relevance Feedback Techniques

A. Traina, Joselene Marques, C. Traina
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引用次数: 25

Abstract

This paper introduces two novel relevance feedback techniques that integrate a new way to implement the query center movement with a suitable weighting on the similarity function. These techniques integrated to a content-based image retrieval (CBIR) system, improves the precision of the results when using texture features up to 42%, and employing at most 5 iterations. Thus, the user satisfaction with the system is increased as our experiments demonstrated. Besides being effective, the new RF techniques are very fast as they take less than one second to reprocess the queries at each iteration. The experiments also show that with three iterations the users are satisfied with the query results, and the major gain in precision happens in the first iteration, achieving improvements of up to 30%, what lessens the user efforts and anxiety
利用新的相关反馈技术对抗CBIR系统中的语义缺口
本文介绍了两种新的相关反馈技术,它们结合了一种新的方法来实现查询中心的移动,并对相似函数进行了适当的加权。将这些技术集成到基于内容的图像检索(CBIR)系统中,当使用纹理特征时,结果的精度提高了42%,并且最多使用5次迭代。因此,我们的实验证明,用户对系统的满意度提高了。除了有效之外,新的RF技术非常快,因为它们在每次迭代中只需要不到一秒的时间来重新处理查询。实验还表明,经过三次迭代,用户对查询结果感到满意,并且精度的主要提高发生在第一次迭代中,达到了30%的提高,减少了用户的努力和焦虑
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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