Efficient Multi-View -Means for Image Clustering

Nowadays, data in the real world often comes from multiple sources, but most existing multi-view {K} -Means perform poorly on linearly non-separable data and require initializing the cluster centers and calculating the mean, which causes the results to be unstable and sensitive to outliers. This pa...

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Veröffentlicht in:IEEE transactions on image processing 2024, Vol.33, p.273-284
Hauptverfasser: Lu, Han, Xu, Huafu, Wang, Qianqian, Gao, Quanxue, Yang, Ming, Gao, Xinbo
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Sprache:eng
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Zusammenfassung:Nowadays, data in the real world often comes from multiple sources, but most existing multi-view {K} -Means perform poorly on linearly non-separable data and require initializing the cluster centers and calculating the mean, which causes the results to be unstable and sensitive to outliers. This paper proposes an efficient multi-view {K} -Means to solve the above-mentioned issues. Specifically, our model avoids the initialization and computation of clusters centroid of data. Additionally, our model use the Butterworth filters function to transform the adjacency matrix into a distance matrix, which makes the model is capable of handling linearly inseparable data and insensitive to outliers. To exploit the consistency and complementarity across multiple views, our model constructs a third tensor composed of discrete index matrices of different views and minimizes the tensor's rank by tensor Schatten {p} -norm. Experiments on two artificial datasets verify the superiority of our model on linearly inseparable data, and experiments on several benchmark datasets illustrate the performance.
ISSN:1057-7149
1941-0042
DOI:10.1109/TIP.2023.3340609