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Pengenalan Multi Wajah Berdasarkan Klasifikasi Kohonen SOM Dioptimalkan dengan Algoritma Discriminant Analysis PCA

机译:PCA判别分析算法优化的基于SOM Kohonen分类的人脸识别

摘要

Face recognition is a process of identification with the image has variations changeable can be recognized, needs a method of optimization to minimize computational time by not affecting the classification results. This research proposes a face recognition system are directly based on Kohonen SOM classification that optimized by the method of Discriminant Analysis based Principal Component Analysis (PCA). Evaluation of PCA’s extraction performance uses two approaches, first the LDA method to optimize PCA issues of the election of irrelevant features of the dataset and the second approach is to apply a kernel function on the LDA (KDA), the results of both approaches are applied on face image classification for Kohonen directly. The testing is two phases, the first stage is testing with a single image of a face and then multi face. Based on the results of testing one face image, both of the approached feature extraction that proposed is very accurately be applied to the classification of the Kohonen SOM with the accurate value of the second approach PCA-KDA is more accurate with 94.22% and the first approach 93.91%, however on the first approach is faster than the second approach with the accurate value of time 0.4 seconds for PCA-LDA and 0.5 seconds to PCA-KDA to one image of the face, but while testing of multi face more two images the result is not significant. Keywords: Face recognition, Feature extraction, Kohonen SOM.
机译:人脸识别是对图像进行识别的过程,可以识别出可变的变化,需要一种优化方法以通过不影响分类结果的方式最大程度地减少计算时间。该研究提出了一种直接基于Kohonen SOM分类的人脸识别系统,该方法通过基于判别分析的主成分分析(PCA)方法进行了优化。评估PCA的提取性能使用两种方法,一种是LDA方法来优化数据集无关特征的选择的PCA问题,第二种方法是在LDA(KDA)上应用核函数,两种方法的结果均被应用直接在Kohonen的人脸图像分类上。测试分为两个阶段,第一阶段是先测试一张人脸,然后再测试多张脸。基于测试一张人脸图像的结果,提出的两种方法都非常准确地应用于Kohonen SOM的分类,第二种方法的准确值PCA-KDA的准确率更高,为94.22%,第一种方法的准确率更高。接近93.91%,但是第一种方法比第二种方法要快,对于一个人脸图像,PCA-LDA的准确时间值为0.4秒,对于PCA-KDA是0.5秒的准确值,但同时测试多张面孔时,需要两个以上的图像结果不重要。关键字:人脸识别,特征提取,Kohonen SOM。

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