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An Improved Face Recognition Technique Based on Modular Multi-directional Two-dimensional Principle Component Analysis Approach

机译:一种基于模块化多向二维二维原理分析方法的改进的面部识别技术

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In this paper, a new method named modularmulti-directional two-dimensional principle componentanalysis (M2D2DPCA) is proposed for face recognition. First,the original images are rotated at some predeterminedangles so that we may extract features from the images inany direction. Then we divide the rotated images intosmaller sub-images and apply 2DPCA approach to each ofthese sub-images. Finally we propose a fusion methodnamed modular multi-directional 2DPCA (M2D2DPCA) tocombine a bank of preliminary results in different directions.Compared with conventional 2DPCA based algorithms, theadvantage of the proposed method is that it can extractsignificant features from the images in any direction andavoid the effects of varying illumination and facialexpression. The results of the experiments on ORL and Yaledatasets show that the proposed M2D2DPCA method canobtain a higher recognition rate than the conventional2DPCA based methods.
机译:本文提出了一种新的方法,名为模块化的二维二维原理分析(M2D2DPCA)的面部识别。首先,原始图像在一些预先确定的情况下旋转,使得我们可以在any方向上提取图像的特征。然后,我们将旋转图像分开IntoSmaller子图像,并在每个子图像中应用2DPCA方法。最后,我们提出了一种融合方法模块化多向2DPCA(M2D2DPCA)逐个初步导致的不同方向的初步结果..具有传统的2DPCA基于算法,​​所提出的方法的Theadvantage是它可以在任何方向和Avavoid中从图像中提取显着的特征不同照明和衔接压抑的影响。 ORL和YALEDATASET的实验结果表明,所提出的M2D2DPCA方法Canobtain比传统的2DPCA的方法彰显更高的识别率。

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