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Unsupervised image categorization

机译:无监督图像分类

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摘要

Large image collections require efficient organization and visualization. This paper describes an approach to establish image categories automatically by unsupervised learning. The method works free of context and previous knowledge: in a first stage, features are formed automatically, then images are clustered to form categories. The human database designer has to decide only whether a category is useful or too inhomogeneous from a high level point of view. To collect images that cannot be categorized automatically, an additional 'miscellaneous' category exists. Categories are visualized by displaying the most typical image(s) of the categories as thumbnails. The main benefit of the approach is that it deals with color and shape in a unified way on a local scale, combined with the advantages of histogram techniques on the global scale. To judge results, an evaluation scheme which is adequate for the task of categorization is proposed.
机译:大图像集合需要有效的组织和可视化。本文介绍了一种通过无监督学习自动建立图像类别的方法。该方法不受上下文和先前知识的影响:在第一阶段,自动形成要素,然后将图像聚类以形成类别。从较高的角度来看,人类数据库设计人员只需决定类别是有用的还是太不统一的。要收集无法自动分类的图像,还存在其他“杂项”类别。通过将类别中最典型的图像显示为缩略图来可视化类别。这种方法的主要好处是,它可以在局部范围内以统一的方式处理颜色和形状,并结合了直方图技术在全球范围内的优势。为了判断结果,提出了一种适合分类任务的评估方案。

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