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Fractional Discrete Cosine Transformation Based Reduced Set of Coefficients for Face Recognition

机译:基于分数离散余弦变换的面部识别减少系数

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In this paper an attempt is made to explore the effect of using reduced set of Discrete Fractional Cosine Transformation based features on the face recognition accuracy. Input image feature set is transformed from spatial domain to spatial frequency domain using FRDCT. The large number of coefficients of fractional order spectrum of the face images obtained by the application of 2D FRDCT is scaled down by classical data dimensionality reduction technique LDA approach. Reduced feature set is then classified by the use of nearest neighbor classifier. The effectiveness of the proposed approach is demonstrated through the simulation on the benchmark database (AT&T). Experimental results also show that unlike DCT, which preserves strong information packing capability, FRDCT also preserves this capability with varying rotation orders.
机译:在本文中,尝试探讨使用基于离散的分数余弦变换的基于面部识别精度的效果。输入图像功能集从空间域转换为使用FRDCT从空间域转换为空间频域。通过施加2D FRDCT获得的面部图像的大量分数级谱的系数通过经典数据维度降低技术LDA方法缩放。然后通过使用最近的邻分类器来分类减少的特征集。通过基准数据库(AT&T)的模拟来证明所提出方法的有效性。实验结果还表明,与DCT不同,它保留了强大的信息包装能力,FRDCT还通过不同的旋转订单保持这种能力。

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