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GriMa: A Grid Mining Algorithm for Bag-of-Grid-Based Classification

机译:GriMa:一种基于网格袋分类的网格挖掘算法

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General-purpose exhaustive graph mining algorithms have seldom been used in real life contexts due to the high complexity of the process that is mostly based on costly isomorphism tests and countless expansion possibilities. In this paper, we explain how to exploit grid-based representations of problems to efficiently extract frequent grid subgraphs and create Bag-of-Grids which can be used as new features for classification purposes. We provide an efficient grid mining algorithm called GriMA which is designed to scale to large amount of data. We apply our algorithm on image classification problems where typical Bag-of-Visual-Words-based techniques are used. However, those techniques make use of limited spatial information in the image which could be beneficial to obtain more discriminative features. Experiments on different datasets show that our algorithm is efficient and that adding the structure may greatly help the image classification process.
机译:通用详尽的图形挖掘算法很少在现实生活中使用,这是由于主要基于昂贵的同构测试和无数的扩展可能性的过程的高复杂性。在本文中,我们解释了如何利用基于网格的问题,以有效地提取频繁的网格子图,并创建可以用作分类目的的新特征的袋式网格。我们提供一种称为GRIMA的有效的网格挖掘算法,该算法旨在扩展到大量数据。我们在使用典型的视觉上的基于袋子的技术的图像分类问题上应用了算法。然而,这些技术利用了图像中的有限的空间信息,这可能是有益的,以获得更多辨别特征。在不同数据集上的实验表明,我们的算法有效,并且添加结构可能极大地帮助图像分类过程。

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