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Unsupervised Learning for Image Classification based on Distribution of Hierarchical Feature Tree

机译:基于分层特征树分布的图像分类无监督学习

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The classification image into one of several categories is a problem arisen naturally under a wide range of circumstances. In this paper, we present a novel unsupervised model for the image classification based on feature's distribution of particular patches of images. Our method firstly divides an image into grids and then constructs a hierarchical tree in order to mine the feature information of the image details. According to our definition, the root of the tree contains the global information of the image, and the child nodes contain detail information of image. We observe the distribution of features on the tree to find out which patches are important in term of a particular class. The experiment results show that our performances are competitive with the state of art in image classification in term of recognition rate.
机译:分类图像进入几个类别之一是在广泛的情况下自然出现的问题。在本文中,我们提出了一种基于特征分布特定图像的图像分类的新型无监督模型。我们的方法首先将图像划分为网格,然后构造分层树,以便挖掘图像细节的特征信息。根据我们的定义,树的根包含图像的全局信息,子节点包含图像的详细信息。我们观察树上的功能分布,以了解特定类的任期内的修补程序很重要。实验结果表明,我们的性能与识别率期限的图像分类中的艺术状态具有竞争力。

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