Semi-Supervised Clustering of Corner-Oriented Attributed Graphs

Jin Tang, Chunyan Zhang, B. Luo
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Abstract

This paper describes a new algorithm for image semi-supervised clustering. In particular, the proposed approach introduces corner-oriented attributed graphs(COAG) constructed based on modified Harris corner extraction method to represent structure objects . 2D-Laplacianface is used to reduce the dimension of feature matrix obtained from COAG. Feature vector is built just from the output of dimensionality reduction. This vector denotes the input to the classifier. Semi-supervised k-mean clustering method (S2KMCM) is carried out as semi-clustering method. Experimental results show that COAG can preserve the structure information of image and S2KFCM can be applied to both clustering and classification tasks by labeled and unlabeled data together.
面向角属性图的半监督聚类
本文提出了一种新的图像半监督聚类算法。特别地,该方法引入了基于改进的Harris角提取方法构造的面向角属性图(COAG)来表示结构对象。利用二维拉普拉斯面对COAG得到的特征矩阵进行降维处理。特征向量是由降维后的输出来构建的。这个向量表示分类器的输入。半监督k均值聚类方法(S2KMCM)是一种半聚类方法。实验结果表明,COAG可以保留图像的结构信息,S2KFCM可以同时用于标记和未标记数据的聚类和分类任务。
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