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Face recognition using transform domain feature extraction and PSO-based feature selection

机译:使用变换域特征提取和基于PSO的特征选择进行人脸识别

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This paper presents two new techniques, viz., DWT Dual-subband Frequency-domain Feature Extraction (DDFFE) and Threshold-Based Binary Particle Swarm Optimization (ThBPSO) feature selection, to improve the performance of a face recognition system. DDFFE uses a unique combination of DWT, DFT, and DCT, and is used for efficient extraction of pose, translation and illumination invariant features. The DWT stage selectively utilizes the approximation coefficients along with the horizontal detail coefficients of the 2-dimensional DWT of a face image, whilst retaining the spatial correlation of pixels. The translation variance problem of the DWT is compensated in the following DFT stage, which also exploits the frequency characteristics of the image. Then, all the low frequency components present at the center of the DFT spectrum are extracted by drawing a quadruple ellipse mask around the spectrum center. Finally, DCT is used to lay the ground for BPSO based feature selection. The second proposed technique, ThBPSO, is a novel feature selection algorithm, based on the recurrence of selected features, and is used to search the feature space to obtain a feature subset for recognition. Experimental results obtained by applying the proposed algorithm on seven benchmark databases, namely, Cambridge ORL, UMIST, Extended Yale B, CMUPIE, Color FERET, FEI, and HP, show that the proposed system outperforms other FR systems. A significant increase in the recognition rate and a substantial reduction in the number of features required for recognition are observed. The experimental results indicate that the minimum feature reduction obtained is 98.2% for all seven databases. (C) 2014 Elsevier B.V. All rights reserved.
机译:本文提出了两种新技术,即DWT双子带频域特征提取(DDFFE)和基于阈值的二进制粒子群优化(ThBPSO)特征选择,以提高人脸识别系统的性能。 DDFFE使用DWT,DFT和DCT的独特组合,并用于有效提取姿势,平移和照明不变特征。 DWT级选择性地利用面部图像的二维DWT的近似系数以及水平细节系数,同时保持像素的空间相关性。 DWT的平移方差问题在随后的DFT阶段得到了补偿,这也利用了图像的频率特性。然后,通过在频谱中心周围绘制四边形椭圆蒙版,提取DFT频谱中心存在的所有低频分量。最后,DCT用于为基于BPSO的特征选择奠定基础。提出的第二种技术ThBPSO是一种基于所选特征的重复性的新颖特征选择算法,用于搜索特征空间以获得特征子集以进行识别。通过将所提出的算法应用于七个基准数据库(剑桥ORL,UMIST,扩展Yale B,CMUPIE,Color FERET,FEI和HP)获得的实验结果表明,所提出的系统优于其他FR系统。观察到识别率的显着提高和识别所需的特征数量的显着减少。实验结果表明,所有七个数据库的最小特征约简率均为98.2%。 (C)2014 Elsevier B.V.保留所有权利。

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