AbstractThe quadratic discriminant classifier (QDC) is a well-known parametric Bayesian classifier that has bee'/> Pooled shrinkage estimator for quadratic discriminant classifier: an analysis for small sample sizes in face recognition
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Pooled shrinkage estimator for quadratic discriminant classifier: an analysis for small sample sizes in face recognition

机译:二次判别分类器的集合收缩估计器:人脸识别中小样本量的分析

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AbstractThe quadratic discriminant classifier (QDC) is a well-known parametric Bayesian classifier that has been successfully applied to statistical pattern recognition problems. One such application is in automatic face recognition where the number of training images per subject is often found to be much less than the length of the facial features. In such a case, the QDC cannot be used because the class-specific covariance matrix on which it depends is either poorly estimated or singular thereby resulting in unacceptable classifier performance. High dimensional covariance estimation techniques such as shrinkage can alleviate this problem but only to a certain extent. This paper presents a computationally simple yet effective solution for further improving the QDC performance in small sample size scenarios. The proposed technique adopts a strategy of combining the class-specific shrinkage estimates of the covariance matrix to obtain a pooled shrinkage estimate, which is then plugged into the QDC. Experiments indicate that the proposed classifier leads to remarkable improvement in face recognition accuracy as compared to the existing classifiers such as the nearest neighbor, support vector machine and naive Bayes, irrespective of the nature of the database and feature extraction method. Monte Carlo simulations reveal that this improvement is due to the much lower mean squared error of the pooled shrinkage estimator which offers greater stability to the QDC.
机译: Abstract 二次判别分类器(QDC)是著名的参数贝叶斯分类器,已经成功地应用于统计模式识别问题。一种这样的应用是在自动面部识别中,其中经常发现每个受试者的训练图像的数量远小于面部特征的长度。在这种情况下,不能使用QDC,因为它所依赖的特定类协方差矩阵估计不佳或奇异,从而导致分类器性能不可接受。高维协方差估计技术(例如收缩率)可以缓解此问题,但只能在一定程度上缓解。本文提出了一种计算简单但有效的解决方案,用于在小样本量情况下进一步提高QDC性能。所提出的技术采用一种策略,将协方差矩阵的特定于类别的收缩估计值组合起来以获得合并的收缩估计值,然后将其插入到QDC中。实验表明,与现有分类器(例如最近邻居,支持向量机和朴素贝叶斯)相比,所提出的分类器可显着提高人脸识别精度,而无需考虑数据库的性质和特征提取方法。蒙特卡洛模拟表明,这种改进是由于合并收缩估计量的均方误差低得多,它为QDC提供了更大的稳定性。

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