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Independent Comparative Study of PCA, ICA, and LDA on the FERET Data Set

机译:基于FERET数据集的PCA,ICA和LDA的独立比较研究

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Face recognition is one of the most successful applications of image analysis and understanding and has gained much attention in recent years. Various algorithms were proposed and research groups across the world reported different and often contradictory results when comparing them. The aim of this paper is to present an independent, comparative study of three most popular appearance-based face recognition projection methods (PCA, ICA, and LDA) in completely equal working conditions regarding preprocessing and algorithm implementation. We are motivated by the lack of direct and detailed independent comparisons of all possible algorithm implementations (e.g., all projection-metric combinations) in available literature. For consistency with other studies, FERET data set is used with its standard tests (gallery and probe sets). Our results show that no particular projection-metric combination is the best across all standard FERET tests and the choice of appropriate projection-metric combination can only be made for a specific task. Our results are compared to other available studies and some discrepancies are pointed out. As an additional contribution, we also introduce our new idea of hypothesis testing across all ranks when comparing performance results.
机译:人脸识别是图像分析和理解的最成功应用之一,近年来受到了广泛关注。提出了各种算法,并且全世界的研究小组在比较它们时报告了不同且常常矛盾的结果。本文的目的是对三种最流行的基于外观的面部识别投影方法(PCA,ICA和LDA)进行完全独立的比较研究,该方法在预处理和算法实现方面完全相同。我们受到现有文献中所有可能的算法实现(例如所有投影度量组合)缺乏直接和详细的独立比较的启发。为了与其他研究保持一致,将FERET数据集与其标准测试(画廊和探针集)一起使用。我们的结果表明,在所有标准FERET测试中,没有特定的投影度量组合是最好的,并且只能针对特定任务选择适当的投影度量组合。我们的结果与其他现有研究进行了比较,并指出了一些差异。作为一项额外的贡献,当比较性能结果时,我们还将介绍我们在各个级别进行假设检验的新思路。

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