基于相似性的大尺度图像搜索与分类

Giuseppe Amato, P. Savino
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引用次数: 0

摘要

在演示中,我们将展示一个在非常大的数据集中通过相似度搜索和自动分类图像的系统。所演示的技术是基于使用MI-File(度量倒文件)作为有效执行相似性搜索的访问方法。MI-File是一种基于倒置文件的访问方法,它依赖于空间转换,该转换使用透视图的概念来决定两个对象之间的相似性。更具体地说,如果两个物体彼此靠近,那么从它们的位置所看到的空间也是相似的。利用这种空间转换,可以使用反向文件执行近似相似性搜索。为了测试这种访问方法的可扩展性,我们从CoPhIR数据集中插入了1.06亿张图像,并创建了一个在线搜索引擎,允许每个人在这个数据集中搜索。此外,我们还使用这种访问方法对这个非常大的图像数据集进行自动分类。更具体地说,我们将使用支持向量机和RBF核的分类问题重新表述为一个复杂的近似相似搜索问题。这种方法不是将每一张图像与分类器进行比较,而是通过复杂的近似相似度搜索查询直接获得属于某一类的最佳图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Searching by Similarity and Classifying Images on a Very Large Scale
In the demonstration we will show a system for searching by similarity and automatically classifying images in a very large dataset. The demonstrated techniques are based on the use of the MI-File (Metric Inverted File) as the access method for executing similarity search efficiently. The MI-File is an access methods based on inverted files that relies on a space transformation that use the notion of perspective to decide about the similarity between two objects. More specifically, if two objects are close one to each other, also the view of the space from their position is similar. Leveraging on this space transformation, it is possible to use inverted file to execute approximate similarity search. In order to test the scalability of this access method, we inserted 106 millions images from the CoPhIR dataset and we created an on-line search engine that allows everybody to search in this dataset. In addition we also used this access methods to perform automatic classification on this very large image dataset. More specifically, we reformulated the classification problem, as resulting from the use of SVM with RBF kernel, as a complex approximate similarity search problem. In such a way, instead of comparing every single image against the classifier, the best images belonging to a class are directly obtained as the result of a complex approximate similarity search query.
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