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Face Recognition Using Local Binary Graph Structure (LBGS) |
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2nd International Conference on Communication Technologies & Networking Services |
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© 2011 by OLS Journal - ISSN No : 2091-
0266 |
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Number 1 Article 1 |
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Year of Publication : 2011 |
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Authors : Eimad Eldin A. Abusham, Housam K. Bashir |
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Citation |
Eimad Eldin A. Abusham, Housam K. Bashir . Face Recognition Using Local Binary Graph Structure (LBGS) : OLS Journals Special Isssue on Communication Technologies & Networking Services , 2011 , Published by : OLS Journals , International Journal of Emerging Sciences" (IJES) |
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Abstract |
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In this paper, a novel and simple algorithm for face recognition based on local binary graph structure (LBGS) has been designed and implemented. LBGS features are derived from a general definition of texture in a local graph neighborhood before being forwarded to the classifier. The idea of LBGS comes from dominating set points for a graph of the image. The experiments results on ORL face database images demonstrated the effectiveness of the proposed method. The advantages of LBGS, first can handle the problem associated with Illumination variation. Second, very simple, fast and can be easily applied in many fields, such as image processing, pattern recognition, medical image as preprocessing. |
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Keywords |
: Algorithm, Feature evaluation and selection, Pattern Recognition, Pattern Recognition. |
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References : |
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