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FACIAL EXPRESSION RECOGNITION WITH SUBPATTERN-BASEDAPPROACHES

机译:基于子模式的 r n方法的表情表达识别

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In this paper Principal Component Analysis (PCA), Subpattern-based PCA (spPCA) and Linear Discriminants Analysis (LDA) methods are used as feature extractors with the combination of the preprocessing techniques of histogram equalization and mean-and-variance normalization in order to nullify the effect of illumination changes which are known to significantly degrade recognition performance. The recognition performance of the holistic PCA, subpattern-based PCA and approach is compared with the performance of subpattern-based PCA and LDA in order to demonstrate the performance differences and similarities between these two types of approaches. To be consistent with the research of others, our work has been tested on three facial expression databases namely JAFFE FGnet and Colin Kanade. Person-dependent and person-independent experiments are performed on these databases separately to represent the recognition performances of the holistic and subpattern-based approaches and LDA.
机译:本文将主成分分析(PCA),基于子模式的PCA(spPCA)和线性判别分析(LDA)方法用作特征提取器,并结合了直方图均衡和均值和方差归一化的预处理技术,以便消除已知会大大降低识别性能的照明变化的影响。将整体PCA,基于子模式的PCA和方法的识别性能与基于子模式的PCA和LDA的性能进行比较,以证明这两种方法之间的性能差异和相似性。为了与他人的研究保持一致,我们的工作已经在三个面部表情数据库上进行了测试,即JAFFE FGnet和Colin Kanade。在这些数据库上分别进行基于个人和独立于个人的实验,以代表基于整体和基于子模式的方法和LDA的识别性能。

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