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首页> 外文期刊>International Journal of Image, Graphics and Signal Processing >3D Face Recognition based on Radon Transform, PCA, LDA using KNN and SVM
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3D Face Recognition based on Radon Transform, PCA, LDA using KNN and SVM

机译:基于Radon变换,PCA,LDA的3D人脸识别(使用KNN和SVM)

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Biometrics (or biometric authentication) refers to the identification of humans by their characteristics or traits. Bio-metrics is used in computer science as a form of identification and access control. It is also used to identify individuals in groups that are under surveillance. Biometric identifiers are the distinctive, measurable characteristics used to label and describe individuals. Three dimensional (3D) human face recognition is emerging as a significant biometric technology. Research interest into 3D face recognition has increased during recent years due to the availability of improved 3D acquisition devices and processing algorithms. Three dimensional face recognition also helps to resolve some of the issues associated with two dimensional (2D) face recognition. In the previous research works, there are several methods for face recognition using range images that are limited to the data acquisition and pre-processing stage only. In the present paper, we have proposed a 3D face recognition algorithm which is based on Radon transform, Principal Component Analysis (PCA) and Linear Discriminant Analysis (LDA). The Radon transform (RT) is a fundamental tool to normalize 3D range data. The PCA is used to reduce the dimensionality of feature space, and the LDA is used to optimize the features, which are finally used to recognize the faces. The experimentation has been done using three publicly available databases, namely, Bhosphorus, Texas and CASIA 3D face databases. The experimental results are shown that the proposed algorithm is efficient in terms of accuracy and detection time, in comparison with other methods based on PCA only and RT+PCA. It is observed that 40 Eigen faces of PCA and 5 LDA components lead to an average recognition rate of 99.20% using SVM classifier.
机译:生物特征识别(或生物特征认证)是指通过人类的特征或特征对其进行识别。生物识别技术在计算机科学中用作识别和访问控制的一种形式。它还用于识别受监视的组中的个人。生物特征识别符是用于标记和描述个人的独特,可测量的特征。三维(3D)人脸识别正在成为一种重要的生物识别技术。由于改进的3D采集设备和处理算法的可用性,近年来对3D人脸识别的研究兴趣增加了。三维人脸识别还有助于解决与二维(2D)人脸识别相关的一些问题。在以前的研究工作中,有几种使用距离图像进行人脸识别的方法,这些方法仅限于数据采集和预处理阶段。在本文中,我们提出了一种基于Radon变换,主成分分析(PCA)和线性判别分析(LDA)的3D人脸识别算法。 Radon变换(RT)是标准化3D范围数据的基本工具。 PCA用于减少特征空间的维数,而LDA用于优化特征,最终用于识别人脸。实验是使用三个公共数据库完成的,即Bhosphorus,Texas和CASIA 3D人脸数据库。实验结果表明,与仅基于PCA和RT + PCA的其他方法相比,该算法在准确性和检测时间上是有效的。可以看出,使用SVM分类器,PCA的40个本征面和5个LDA成分的平均识别率达到99.20%。

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