Kernel Eigenfaces vs. Kernel Fisherfaces:使用Kernel方法进行人脸识别

Ming-Hsuan Yang
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引用次数: 834

摘要

主成分分析和Fisher线性判别方法在人脸检测、识别和跟踪方面取得了成功。这些子空间方法中的表示基于图像集的二阶统计量,并且不处理高阶统计依赖性,例如三个或更多像素之间的关系。近年来,高阶统计量和独立分量分析(ICA)被用作视觉识别的信息表示。在本文中,我们研究了使用核主成分分析和核Fisher线性判别法来学习人脸识别的低维表示,我们称之为核特征脸和核Fisher脸方法。Eigenface和Fisherface方法的目的是基于样本的二阶相关性找到投影方向,而Kernel Eigenface和Kernel Fisherface方法提供了考虑高阶相关性的推广。在基于外观的人脸识别问题的背景下,我们使用两个数据集比较了核方法与经典算法(如特征脸、渔场脸、ICA和支持向量机(SVM))的性能,其中图像在姿势、规模、光照和表情上有所不同。实验结果表明,核方法在人脸识别中具有较好的表征效果和较低的错误率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Kernel Eigenfaces vs. Kernel Fisherfaces: Face recognition using kernel methods
Principal Component A nalysis and Fisher Linear Discriminant methods have demonstrated their success in fac edete ction, r ecognition and tr acking. The representations in these subspace methods are based on second order statistics of the image set, and do not address higher order statistical dependencies such as the relationships among three or more pixels. Recently Higher Order Statistics and Independent Component Analysis (ICA) have been used as informative representations for visual recognition. In this paper, we investigate the use of Kernel Principal Component Analysis and Kernel Fisher Linear Discriminant for learning low dimensional representations for face recognition, which we call Kernel Eigenface and Kernel Fisherface methods.While Eigenface and Fisherface methods aim to find projection directions based on second order correlation of samples, Kernel Eigenface and Kernel Fisherface methods provide generalizations which take higher order correlations into account. We compare the performance of kernel methods with classical algorithms such as Eigenface, Fisherface, ICA, and Support Vector Machine (SVM) within the context of appearance-based face recognition problem using two data sets where images vary in pose, scale, lighting and expression. Experimental results show that kernel methods provide better representations and achieve lower error rates for face recognition.
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