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An Image Classification Method Based on a SK Sub-VectorMulti-Hierarchy Clustering Algorithm

机译:基于SK子矢量多层次聚类算法的图像分类方法。

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To make image databases more effectively organized, we present a SK (Sequence clustering plus the K-mean clustering) sub-vector multi-hierarchy clustering algorithm in this paper. It clusters images to numbers of classes automatically, according to human perception. It utilized HSV histograms, wavelet texture features, color-texture moments, a gray gradient co-occurrence matrix, and hierarchical distribution features, to put similar semantic images into the same set. The algorithm was effectively proven by experiments for automatic image clustering, for the clustering image categories have semantically similar properties. It could organize image database efficiency so as to improve image retrieval.
机译:为了使图像数据库更有效地组织起来,本文提出了一种SK(序列聚类加K-mean聚类)子矢量多层次聚类算法。根据人类的感知,它会自动将图像聚类为若干类。它利用HSV直方图,小波纹理特征,颜色纹理矩,灰度梯度共现矩阵和分层分布特征,将相似的语义图像放入同一集合中。实验证明该算法有效地用于自动图像聚类,因为聚类图像类别在语义上具有相似的特性。它可以组织图像数据库的效率,从而改善图像检索。

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