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Kernel linear regression for low resolution face recognition under variable illumination

机译:核线性回归用于可变光照下的低分辨率人脸识别

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To improve the limitation of linear regression classification, a class specific kernel linear regression classification is proposed for low resolution face recognition under variable illumination. The nonlinear mapping function enhances the modeling capability for highly nonlinear data distribution. The explicit knowledge of the nonlinear mapping function can be avoided computationally by using the kernel trick. With kernel projection, the class label is also determined by calculating the minimum reconstruction error. Experiments carried out on Yale B facial database in size of 8×8 pixels reveal that the proposed algorithm outperforms the state-of-the-art methods and demonstrates promising abilities against severe illumination variation.
机译:为了改善线性回归分类的局限性,针对可变光照下的低分辨率人脸识别,提出了一种基于类的核线性回归分类方法。非线性映射功能增强了高度非线性数据分布的建模能力。通过使用内核技巧,可以避免计算非线性映射函数的明确知识。对于内核投影,还可以通过计算最小重构误差来确定类别标签。在Yale B人脸数据库上以8×8像素大小进行的实验表明,所提出的算法优于最新技术,并证明了应对严重光照变化的有希望的能力。

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