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Comparison of Spectral-Only and Spectral/Spatial Face Recognition for Personal Identity Verification

机译:用于个人身份验证的仅光谱和光谱/空间面部识别的比较

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摘要

Face recognition based on spatial features has been widely used for personal identity verification for security-related applications. Recently, near-infrared spectral reflectance properties of local facial regions have been shown to be sufficient discriminants for accurate face recognition. In this paper, we compare the performance of the spectral method with face recognition using the eigenface method on single-band images extracted from the same hyperspectral image set. We also consider methods that use multiple original and PCA-transformed bands. Lastly, an innovative spectral eigenface method which uses both spatial and spectral features is proposed to improve the quality of the spectral features and to reduce the expense of the computation. The algorithms are compared using a consistent framework.
机译:基于空间特征的面部识别已被广泛用于安全相关应用的个人身份验证。近来,局部面部区域的近红外光谱反射特性已经被证明是用于精确面部识别的充分判别器。在本文中,我们将从相同的高光谱图像集中提取的单波段图像上,将光谱方法与使用特征脸方法的人脸识别的性能进行了比较。我们还考虑了使用多个原始和PCA转换频段的方法。最后,提出了一种创新的同时利用空间和光谱特征的光谱特征面方法,以提高光谱特征的质量并减少计算费用。使用一致的框架比较算法。

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