A group of facial normal descriptors for recognizing 3D identical twins

BTAS(2012)

引用 15|浏览7
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摘要
In this paper, to characterize and distinguish identical twins, three popular texture descriptors: i.e. local binary patterns (LBPs), gabor filters (GFs) and local gabor binary patterns (LGBPs) are employed to encode the normal components (x, y and z) of the 3D facial surfaces of identical twins respectively. A group of facial normal descriptors are thus achieved, including Normal Local Binary Patterns descriptor (N-LBPs), Normal Gabor Filters descriptor (N-GFs) and Normal Local Gabor Binary Patterns descriptor (N-LGBPs). All these normal encoding based descriptors are further fed into sparse representation classifier (SRC) for identification. Experimental results on the 3D TEC database demonstrate that these proposed normal encoding based descriptors are very discriminative and efficient, achieving comparable performance to the best of state-of-the-art algorithms.
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关键词
n-gf,image representation,facial normal descriptor,image coding,face recognition,identification,src,gabor filters,normal gabor filter descriptor,normal local gabor binary pattern descriptor,3d identical twins recognition,image classification,normal encoding based descriptor,texture descriptor,3d tec database,image texture,sparse representation classifier,3d facial surface,n-lgbp,feature extraction,face,vectors
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