UR3D-C: Linear dimensionality reduction for efficient 3D face recognition

Biometrics(2011)

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摘要
We present a novel approach for computing a compact and highly discriminant biometric signature for 3D face recognition using linear dimensionality reduction techniques. Initially, a geometry-image representation is used to effectively resample the raw 3D data. Subsequently, a wavelet transform is applied and a biometric signature composed of 7,200 wavelet coefficients is extracted. Finally, we apply a second linear dimensionality reduction step to the wavelet coefficients using Linear Discriminant Analysis and compute a compact biometric signature. Although this biometric signature consists of just 57 coefficients, it is highly discriminant. Our approach, UR3D-C, is experimentally validated using four publicly available databases (FRGC v1, FRGC v2, Bosphorus and BU-3DFE). State-of-the-art performance is reported in all of the above databases.
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关键词
novel approach,available databases,face recognition,discriminant biometric signature,frgc v2,compact biometric signature,frgc v1,wavelet coefficient,biometric signature,linear dimensionality reduction technique,linear dimensionality reduction step,geometry,statistical analysis,wavelet transform,wavelet transforms
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