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A multi-class relevance feedback approach to image retrieval

机译:图像检索的多级相关反馈方法

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Relevance feedback methods for content-based image retrieval have shown promise in a variety of image database applications. These techniques assume two-class relevance feedback, relevant and irrelevant. While simple computationally, two-class relevance feedback often becomes inadequate in providing sufficient information to help rapidly improve retrieval performance. We propose a locally adaptive technique for content-based image retrieval that enables relevance feedback to take on multi-class form. For each given query, we estimate local feature relevance based on Chi-squared analysis using information provided by multi-class relevance feedback. Local feature relevance is then used to compute a flexible metric that is highly adaptive to query locations. As a result, local data distributions can be sufficiently exploited, whereby rapid performance improvement can be achieved. Experimental results using real image data validate the efficacy of our method.
机译:基于内容的图像检索的相关反馈方法已经显示了各种图像数据库应用程序中的承诺。这些技术假设两级相关反馈,相关和无关紧要。虽然简单的计算方式,两级相关反馈通常变得不足以提供足够的信息,以帮助快速提高检索性能。我们提出了一种用于基于内容的图像检索的本地自适应技术,使得能够相关反馈来采用多级形式。对于每个给定的查询,我们使用多级相关反馈提供的信息来估计基于Chi-Squared分析的本地特征相关性。然后,本地特征相关性将用于计算对查询位置具有高度自适应的灵活度量。结果,可以充分利用本地数据分布,从而可以实现快速的性能改进。使用真实图像数据的实验结果验证了我们方法的功效。

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