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Frontal View Recognition Using Spectral Clustering and Subspace Learning Methods

机译:使用谱聚类和子空间学习方法的正面视图识别

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In this paper, the problem of frontal view recognition on still images is confronted, using subspace learning methods. The aim is to acquire the frontal images of a person in order to achieve better results in later face or facial expression recognition. For this purpose, we utilize a relatively new subspace learning technique, Clustering based Discriminant Analysis (CDA) against two well-known in the literature subspace learning techniques for dimensionality reduction, Principal Component Analysis (PCA) and Linear Discriminant Analysis (LDA). We also concisely describe spectral clustering which is proposed in this work as a preprocessing step to the CDA algorithm. As classifiers, we use the K- Nearest Neighbor the Nearest Centroid and the novel Nearest Cluster Centroid classifiers. Experiments conducted on the XM2VTS database, demonstrate that PCA+CDA outperforms PCA, LDA and PCA+LDA in Cross Validation inside the database. Finally the behavior of these algorithms, when the size of training set decreases, is explored to demonstrate their robustness.
机译:在本文中,使用子空间学习方法解决了静止图像上的正面视图识别问题。目的是获取人的正面图像,以便在以后的面部或面部表情识别中获得更好的结果。为此,我们利用了一种相对较新的子空间学习技术,即基于聚类的判别分析(CDA),而文献中针对降维的子空间学习技术中的两种众所周知的方法是:主成分分析(PCA)和线性判别分析(LDA)。我们还简要地描述了频谱聚类,它是这项工作中提出的CDA算法的预处理步骤。作为分类器,我们使用K最近邻,最近质心和新颖的最近聚类质心分类器。在XM2VTS数据库上进行的实验表明,在数据库内部的交叉验证中,PCA + CDA的性能优于PCA,LDA和PCA + LDA。最后,当训练集的大小减小时,探索这些算法的行为以证明其鲁棒性。

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