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Face Recognition Using Gabor-based Improved Supervised Locality Preserving Projections

机译:使用基于Gabor的改进的监督局部保留投影的人脸识别

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摘要

A novel Gabor-based Improved Supervised Locality Preserving Projections for face recognition is presented in this paper. This new algorithm is based on a combination of Gabor wavelets representation of face images and Improved Supervised Locality Preserving Projections for face recognition and it is robust to changes in illumination and facial expressions and poses. In this paper, Gabor filter is first designed to extract the features from the whole face images, and then a supervised locality preserving projections, which is improved by two-directional 2DPCA to eliminate redundancy among Gabor features, is used to augment these Gabor feature vectors derived from Gabor wavelets representation. The new algorithm benefits mostly from two aspects: One aspect is that Gabor wavelets are promoted for their useful properties, such as invariance to illumination, rotation, scale and translations, in feature extraction. The other is that the Improved Supervised Locality Preserving Projections not only provides a category label for each class in a training set, but also reduces more coefficients for image representation from two directions and boost the recognition speed. Experiments based on the ORL face database demonstrate the effectiveness and efficiency of the new method. Results show that our new algorithm outperforms the other popular approaches reported in the literature and achieves a much higher accurate recognition rate.
机译:本文提出了一种新颖的基于Gabor的改进的有监督的局部保存投影算法用于人脸识别。该新算法基于面部图像的Gabor小波表示和用于面部识别的改进的监督局部保留投影相结合,并且对照明,面部表情和姿势的更改具有鲁棒性。在本文中,首先设计了Gabor滤波器,以从整个面部图像中提取特征,然后使用双向2DPCA进行改进以消除Gabor特征之间的冗余,并进行监督的局部保留投影,以增强这些Gabor特征向量从Gabor小波表示中得出。新算法主要从两个方面受益:一方面,Gabor小波因其有用的特性而得到提升,例如在特征提取中对照明,旋转,比例和平移不变。另一个是改进的监督局部保存投影不仅在训练集中为每个班级提供类别标签,而且从两个方向减少了更多的图像表示系数,并提高了识别速度。基于ORL人脸数据库的实验证明了该方法的有效性和有效性。结果表明,我们的新算法优于文献报道的其他流行方法,并获得了更高的准确识别率。

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