Fig. 1 Face image as a linear combination in NMF.
Fig. 2 Part of basis vectors in S-NMF.
Fig. 3 Part of basis vectors in P-NMF.
Fig. 4 Part of basis vectors in O-NMF.
Fig. 5 Face recognition system using part-based image representation
Fig. 6 Part of ORL image database
Fig. 7 Face image with occlusion (10~60%)
Fig. 8 Average and 150 eigenfaces in PCA
Fig. 9 Recognition rate according to the number of basis vectors
Fig. 10 Recognition rate according to the number of basis vectors with occlusions
Table. 1 Recognition rate according to the number of basis vectors
Table. 2 Recognition rate according to the number of basis vectors with occlusions
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