基于核方法的图像分类与检索方法

C. Sekhar, S. Kumar, M. Subhas, R. Buyya
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摘要

支持向量机(SVM)是一种模式分类模型,适用于使用图像的非向量表示对图像进行分类和标注。从图像数据中提取的不同长度的模式对应于一组局部特征向量。为变化长度模式设计的核称为动态核。讨论了基于动态核的支持向量机图像分类与标注的设计问题。给出了设计动态核的不同方法。利用一组虚拟特征向量对选择的局部特征向量对进行匹配,构建了对变长模式的中间匹配核(IMK)。对于特征向量集合对应的模式,使用高斯混合模型(GMM)作为虚拟特征向量集合。在基于内容的图像检索中,基于gmm的IMK被考虑用于图像分类、匹配和标注等图像处理任务。介绍了基于核方法的图像分类、标注和检索的实验研究结果。
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Kernel methods based approaches to image classification and retrieval
Support vector machine (SVM) is a pattern classification model suitable for classification and annotation of images using non-vectorial type representations of images. Varying length patterns extracted from image data correspond to sets of local feature vectors. Kernels designed for varying length patterns are called as dynamic kernels. The talk presents the issues in designing the dynamic kernel based SVMS for classification and annotation of images. Different methods for designing the dynamic kernels are presented. An intermediate matching kernel (IMK) for a pair of varying length patterns is constructed by matching the pairs of local feature vectors selected using a set of virtual feature vectors. For patterns corresponding to sets of feature vectors, a Gaussian mixture model (GMM) is used as the set of virtual feature vectors. The GMM-based IMK is considered for image processing tasks such as image classification, matching and annotation in content-based image retrieval. The talk presents results of experimental studies on image classification, annotation and retrieval of images using the kernel methods.
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