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A center-biased graph learning algorithm for image classification

机译:用于图像分类的中心偏置图学习算法

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Graph matching is an important problem in the field of computer vision. Graph matching problem can be represented as quadratic assignment problem. Because the problem is known to be NP-hard, optimal solution is hardly achievable so that a lot of algorithms are proposed to approximate it. Although there have been many studies about fast and accurate approximations, there have been few studies about graph learning. This paper presents a graph learning algorithm which works in an unsupervised way. The process requires neither annotated dataset nor training dataset. The algorithm learns a graph from a model image using a variation of random walk, which we call center biased random walk with restart (CBRWR). This algorithm can be implemented using two-dimensional Gaussian distribution. For this, we propose a modified histogram-based attribute. The attributes consider relationship between edges as well as nodes. Image matching is done using the model graph which is created by our method. We conducted image classification experiments to check the competitiveness of our algorithm.
机译:图表匹配是计算机愿景领域的重要问题。图形匹配问题可以表示为二次分配问题。因为已知问题是NP - 硬,所以最佳解决方案几乎无法实现,从而提出了大量算法以近似它。虽然有很多关于快速准确近似的研究,但是关于图表学习的研究很少。本文介绍了一种以无人监督的方式工作的图表学习算法。该过程既不需要注释数据集也不是训练数据集。该算法使用随机散步的变体来了解来自模型图像的图表,我们通过重启(CBRWR)来调用中心偏见随机散步。该算法可以使用二维高斯分布来实现。为此,我们提出了一种修改后的基于直方图的属性。该属性考虑边缘与节点之间的关系。使用我们的方法创建的模型图来完成图像匹配。我们进行了图像分类实验,以检查算法的竞争力。

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