Similarity search in fuzzy object databases

Diana Uskat, Tobias Emrich, Andreas Züfle, Klaus Arthur Schmid, T. Bernecker, M. Renz
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引用次数: 1

Abstract

Fuzzy object databases are becoming more and more important in the context of image analysis. Examples include satellite images where blurred trees, houses or lakes can still be organized and searched in a meaningful manner and biomedical images which can be utilized to find similar disease patterns and monitor disease progress. One problem of the underlying data is that it contains blurred image content, i.e., fuzzy data. Therefore, an image-based similarity search, which can process huge amounts of fuzzy data in an efficient and effective way, is desirable. The aim of this work is to develop efficient and effective methods for similarity search in fuzzy object databases. First, a suitable similarity measure based on a shape similarity is proposed. Based on this, two novel k-nearest neighbor algorithms for efficient similarity search are presented. The first approach gains efficiency at the cost of incurring only approximate results, while the second approach uses a filter-refinement approach to prune computation. Our experimental evaluation shows the efficiency of the proposed algorithms.
模糊对象数据库中的相似度搜索
模糊对象数据库在图像分析中发挥着越来越重要的作用。例子包括卫星图像,其中模糊的树木、房屋或湖泊仍然可以以有意义的方式组织和搜索,生物医学图像可以用来发现类似的疾病模式和监测疾病进展。底层数据的一个问题是它包含了模糊的图像内容,即模糊数据。因此,需要一种基于图像的相似性搜索,能够高效地处理大量模糊数据。本研究的目的是开发一种高效的模糊对象数据库相似度搜索方法。首先,提出了一种合适的基于形状相似度的相似性度量。在此基础上,提出了两种新的k近邻算法进行高效的相似度搜索。第一种方法以只产生近似结果为代价获得了效率,而第二种方法使用过滤器细化方法来修剪计算。实验验证了所提算法的有效性。
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