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Combining Gaussian Mixture Models and Support Vector Machines for Relevance Feedback in Content Based Image Retrieval

机译:结合高斯混合模型和支持向量机在基于内容的图像检索中进行相关反馈

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摘要

A relevance feedback (RF) approach for content based image retrieval (CBIR) is proposed, which combines Support Vector Machines (SVMs) with Gaussian Mixture (GM) models. Specifically, it constructs GM models of the image features distribution to describe (he image content and trains an SVM classifier to distinguish between the relevant and irrelevant images according to the preferences of the user. The method is based on distance measures between probability density functions (pdfs), which can be computed in closed form for GM models. In particular, these distance measures are used to define a new SVM kernel function expressing the similarity between the corresponding images modeled as GMs. Using this kernel function and the user provided feedback examples, an SVM classifier is trained in each RF round, resulting in an updated ranking of the database images. Numerical experiments are presented that demonstrate the merits of the proposed relevance feedback methodology and the advantages of using GMs for image modeling in the RF framework.
机译:提出了一种基于内容的图像检索(CBIR)的相关反馈(RF)方法,该方法将支持向量机(SVM)与高斯混合(GM)模型相结合。具体而言,它构建图像特征分布的GM模型来描述(图像内容并训练SVM分类器根据用户的偏好来区分相关图像和不相关图像。该方法基于概率密度函数之间的距离测度( pdfs),可以针对GM模型以封闭形式进行计算,尤其是,这些距离度量用于定义一个新的SVM内核函数,该函数表达了建模为GM的相应图像之间的相似性。 ,在每个RF循环中训练SVM分类器,从而更新数据库图像的排名,并进行了数值实验,这些实验证明了所提出的相关反馈方法的优点以及在GM框架中使用GM进行图像建模的优势。

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