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Learning Gabor Magnitude Features for Palmprint Recognition

机译:学习掌上识别的Gabor幅度特征

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Palmprint recognition, as a new branch of biometric technology, has attracted much attention in recent years. Various palmprint representations have been proposed for recognition. Gabor feature has been recognized as one of the most effective representations for palmprint recognition, where Gabor phase and orientation feature representations are extensively studied. In this paper, we explore a novel Gabor magnitude feature-based method for palmprint recognition. The novelties are as follows: First, we propose an illumination normalization method for palmprint images to decrease the influence of illumination variations caused by different sensors and lighting conditions. Second, we propose to use Gabor magnitude features for palmprint representation. Third, we utilize AdaBoost learning to extract most effective features and apply Local Discriminant Analysis (LDA) to reduce the dimension further for palmprint recognition. Experimental results on three large palmprint databases demonstrate the effectiveness of proposed method. Compared with state-of-the-art Gabor-based methods, our method achieves higher accuracy.
机译:Palmprint认可作为生物识别技术的新分支,近年来引起了很多关注。已经提出了各种掌纹代表来承认。 Gabor特征已被认为是Palmprint识别最有效的表示之一,其中广泛研究了Gabor阶段和定向特征表示。在本文中,我们探讨了基于Gabor幅度特征的掌纹识别方法。 Noveltize如下:首先,我们提出了一种用于掌纹图像的照明标准化方法,以减少由不同传感器和照明条件引起的照明变化的影响。其次,我们建议使用Gabor幅度特征来进行掌纹表示。第三,我们利用Adaboost学习提取最有效的特征,并应用局部判别分析(LDA)以进一步降低尺寸以进行掌纹识别。三大掌纹数据库的实验结果证明了提出方法的有效性。与最先进的基于GABOR的方法相比,我们的方法达到了更高的准确性。

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