基于扩散图的图像聚类

R. Agrawal, C.-H. Wu, W. Grosky, F. Fotouhi
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引用次数: 4

摘要

在使用低级特征对大量图像进行聚类时,遇到的问题之一是高维特征空间。特征空间的高维导致了聚类过程中特征选择和距离测量的不必要开销。本文提出了一种基于扩散图的特征空间降维方法。在提出的方法中,每个图像由一组图块表示。通过将这些图块分类为一组聚类,并计算每个聚类在我们数据库的每张图像中的出现次数,得出一个视觉关键字-图像矩阵。视觉关键词-图像矩阵类似于信息检索中的词-文档矩阵。我们使用扩散图来降低视觉关键词矩阵的维数。通过降低图像表示的维数,可以显著节省计算成本。我们比较了所提出的方法和使用全局MPEG-7颜色描述符的方法的性能。结果证明了这些改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diffusion maps-based image clustering
In the clustering of large number of images using low-level features, one of the problems encountered is the high dimensional feature space. The high dimensionality of feature spaces leads to unnecessary cost in feature selection and also in the distance measurement during the clustering process. In this paper, we propose an approach to reduce the dimensionality of the feature space based on diffusion maps. In the proposed approach, each image is represented by a set of tiles. A visual keyword-image matrix is derived from classifying these tiles into a set of clusters and counting the occurrence of each cluster in each image of our database. The visual keyword-image matrix is similar to the term-document matrix in information retrieval. We use diffusion maps to reduce the dimensionality of visual keyword matrix. By reducing the dimensionality of the image representation, we can save computation cost significantly. We compare the performance between the proposed approach and the approach that uses the global MPEG-7 color descriptors. The results demonstrate the improvements.
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