A Two-Way Optimization Framework for Clustering of Images using Weighted Tensor Nuclear Norm Approximation

A. Johnson, Jobin Francis, Baburaj Madathil, S. N. George
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引用次数: 4

Abstract

Clustering of multidimensional data has found applications in different fields. Among the existing methods, spectral clustering techniques have gained great attention due to its superior performance and low computational complexity. The clustering accuracy in spectral clustering methods depends on the affinity matrix learned from the data. Traditional clustering techniques fail to capture the spatial aspects of the images since they vectorize the images. In the proposed approach, the images are stacked as lateral slices of a three-way tensor. Further, a two-way optimization problem is formulated to extract a sparse t-linear combination tensor. Weighted Tensor Nuclear Norm (WTNN) is introduced in the optimization problem for enhancing tensor sparsity, and thereby improving the clustering accuracy. The performance of the proposed method is evaluated on three popular datasets. The evaluation shows that the proposed method has superior performance over the state-of-the-art methods.
基于加权张量核范数逼近的图像聚类双向优化框架
多维数据聚类在不同领域都有应用。在现有的聚类方法中,光谱聚类技术以其优越的性能和较低的计算复杂度而备受关注。谱聚类方法的聚类精度取决于从数据中学习到的亲和矩阵。传统的聚类技术对图像进行矢量化处理,无法捕捉图像的空间特征。在提出的方法中,图像被堆叠为三向张量的横向切片。进一步,提出了一个双向优化问题来提取稀疏t-线性组合张量。在优化问题中引入加权张量核范数(WTNN)来增强张量稀疏性,从而提高聚类精度。在三个流行的数据集上对该方法的性能进行了评估。评价结果表明,该方法具有较好的性能。
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