Efficient Visual Information Retrieval using Orthogonal MSTs

C. Theoharatos, N. Laskaris, G. Economou, S. Fotopoulos
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Abstract

The notion of interpoint-distance-based graphs has in the past, guided the extension of distributional order-measures to multivariate observations. The concept of minimal spanning tree (MST) was introduced as the key pattern for generalizing the univariate two-sample problem to multivariate observations. Here, the multivariate Wald-Wolfowitz test is further quantified using the enhanced representations of orthogonal MSTs. Their advantages are investigated by comparing the similarity between color distributions in the feature space, using a standard feature extraction technique borrowed computer vision. To demonstrate the performance of the proposed scheme, the application on a diverse collection of images has been systematically studied in a query-by-example visual information retrieval task. Experimental results show that a powerful measure of similarity can emerge from the statistical comparison of their efficiently drawn pattern representations
基于正交MSTs的高效视觉信息检索
在过去,基于点间距离的图的概念指导了分布阶测度向多元观测的扩展。引入最小生成树(MST)的概念,作为将单变量双样本问题推广到多变量观测的关键模式。在这里,多变量Wald-Wolfowitz检验使用正交MSTs的增强表示进一步量化。利用借鉴计算机视觉的标准特征提取技术,通过比较特征空间中颜色分布之间的相似性来研究它们的优点。为了验证所提方案的性能,系统地研究了基于实例查询的视觉信息检索任务在不同图像集合中的应用。实验结果表明,通过对有效绘制的模式表示进行统计比较,可以产生强大的相似性度量
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