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From Frequent Itemsets to Semantically Meaningful Visual Patterns

机译:从常用项目集到语义有意义的视觉模式

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摘要

Data mining techniques that are successful in transaction and text data may not be simply applied to image data that contain high-dimensional features and have spatial structures. It is not a trivial task to discover meaningful visual patterns in image databases, because the content variations and spatial dependency in the visual data greatly challenge most existing methods. This paper presents a novel approach to coping with these difficulties for mining meaningful visual patterns. Specifically, the novelty of this work lies in the following new contributions: (1) a principled solution to the discovery of meaningful itemsets based on frequent itemset mining; (2) a self-supervised clustering scheme of the high-dimensional visual features by feeding back discovered patterns to tune the similarity measure through metric learning; and (3) a pattern summarization method that deals with the measurement noises brought by the image data. The experimental results in the real images show that our method can discover semantically meaningful patterns efficiently and effectively.
机译:在事务和文本数据中成功的数据挖掘技术可能不会简单地应用于包含高维特征并具有空间结构的图像数据。在图像数据库中发现有意义的视觉模式并不是一件容易的事,因为视觉数据中的内容变化和空间依赖性极大地挑战了大多数现有方法。本文提出了一种新颖的方法来应对这些困难,以挖掘有意义的视觉模式。具体而言,这项工作的新颖性在于以下新的贡献:(1)一种基于频繁项目集挖掘的有意义的项目集发现的原则性解决方案; (2)通过反馈发现的模式以通过度量学习调整相似性度量来对高维视觉特征进行自我监督的聚类方案; (3)一种处理图像数据带来的测量噪声的模式总结方法。在真实图像中的实验结果表明,我们的方法可以有效地发现语义上有意义的模式。

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