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Face recognition using Symlet, PCA and cosine angle distance measure

机译:使用Symlet,PCA和余弦角距离测量的人脸识别

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In this paper an approach for face recognition is proposed using Symlet, PCA and Cosine angle distance measure. The recognition rate and computational cost of proposed approach is examined against different wavelet families and Euclidean distance measure. Feature extraction is performed using Discrete wavelet transform and Principal component analysis (DWT-PCA). In order to explore best features, experiments are carried out for DWT subband selection and for DWT wavelet selection on Symlet family and on four other different wavelet families (Daubechies, Coiflets, Discrete Meyer and Biorthogonal wavelet family). This also includes their members that vary in terms of orthogonality, symmetry, support size, vanishing moments and filter order. After generating feature vectors, classification is done by Cosine angle distance measure based nearest neighbor classifier (NNC) and its results are compared with Euclidean distance measure. As test dataset, AT&T database of 400 images of 40 people is used to establish the performance by proposed approach. Experimental results on Symlet-6 with Cosine angle distance measure based nearest neighbor classifier shows highest percentage recognition rate of 98.33 for randomly generated 120 image training set.
机译:本文提出了一种基于Symlet,PCA和余弦角距离测量的人脸识别方法。针对不同的小波族和欧氏距离测度,对所提方法的识别率和计算成本进行了检验。使用离散小波变换和主成分分析(DWT-PCA)进行特征提取。为了探索最佳特征,在Symlet家族和其他四个不同的小波家族(Daubechies,Coiflets,Discrete Meyer和Biorthogonal小波家族)上进行了DWT子带选择和DWT小波选择的实验。这还包括其成员在正交性,对称性,支撑尺寸,消失力矩和过滤器顺序方面有所不同。生成特征向量后,通过基于最近邻分类器(NNC)的余弦角距离度量进行分类,并将其结果与欧氏距离度量进行比较。作为测试数据集,使用40个人的400张图像的AT&T数据库通过提出的方法来建立性能。基于基于最近邻分类器的余弦角距离测量的Symlet-6的实验结果显示,随机生成的120个图像训练集的最高识别率达到98.33。

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