Gabor face clustering using affinity propagation and structural similarity index

被引:0
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作者
Issam Dagher
Sandy Mikhael
Oubaida Al-Khalil
机构
[1] University of Balamand,Computer Engineering Department
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关键词
Face clustering; Affinity propagation; Gabor; Structural similarity index;
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摘要
Clustering is an important technique in data mining. It separates data points into different groups or clusters in such a way that objects in the same group are more similar to each other in some sense than with the objects in other groups. Gabor face clustering using affinity propagation and structural similarity index is composed of: A representation based on Gabor filters which has been shown to perform very well in face features, Affinity propagation clustering algorithm which is flexible, high speed, and does not require to specify the number of clusters, and structural similarity index which is a very powerful method for measuring the similarity between two images. Experimental results on two benchmark face datasets (LFW and IJB-B) show that our method outperforms well known clustering algorithms such as k-means, spectral clustering and Agglomerative.
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页码:4719 / 4727
页数:8
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