Probabilistic relevance feedback approach for content-based image retrieval based on gaussian mixture models

Apostolos Marakakis, N. Galatsanos, A. Likas, A. Stafylopatis
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引用次数: 14

Abstract

A new relevance feedback (RF) approach for content-based image retrieval is presented. This approach uses Gaussian mixture (GM) models of the image features and a query that is updated in a probabilistic manner. This update reflects the preferences of the user and is based on the models of both the positive and negative feedback images. The retrieval is based on a recently proposed distance measure between probability density functions, which can be computed in closed form for GM models. The proposed approach takes advantage of the form of this distance measure and updates it very efficiently based on the models of the user-specified relevant and irrelevant images. It is also shown that this RF framework is fairly general and can be applied in case other image models or distance measures are used instead of those proposed in this work. Finally, comparative numerical experiments are provided, which that demonstrate the merits of the proposed RF methodology and the use of the distance measure, and also the advantages of using GMs for image modelling.
基于高斯混合模型的基于内容的图像检索的概率相关反馈方法
提出了一种新的基于内容的图像检索相关反馈方法。该方法使用图像特征的高斯混合(GM)模型和以概率方式更新的查询。此更新反映了用户的偏好,并基于正面和负面反馈图像的模型。检索是基于最近提出的概率密度函数之间的距离度量,它可以以GM模型的封闭形式计算。该方法利用了这种距离度量的形式,并基于用户指定的相关和不相关图像的模型对其进行了非常有效的更新。研究还表明,该RF框架是相当通用的,可以应用于使用其他图像模型或距离测量而不是本工作中提出的那些。最后,提供了比较数值实验,证明了所提出的射频方法和使用距离度量的优点,以及使用gm进行图像建模的优点。
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