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Class-Distance-Based Discriminant Analysis and Its Application to Supervised Automatic Age Estimation

机译:基于类距离的判别分析及其在监督自动年龄估计中的应用

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We propose a novel method of supervised feature projection called class-distance-based discriminant analysis (CDDA), which is suitable for automatic age estimation (AAE) from facial images. Most methods of supervised feature projection, e.g., Fisher discriminant analysis (FDA) and local Fisher discriminant analysis (LFDA), focus on determining whether two samples belong to the same class (i.e., the same age in AAE) or not. Even if an estimated age is not consistent with the correct age in AAE systems, i.e., the AAE system induces error, smaller errors are better. To treat such characteristics in AAE, CDDA determines between-class separability according to the class distance (i.e., difference in ages); two samples with similar ages are imposed to be close and those with spaced ages are imposed to be far apart. Furthermore, we propose an extension of CDDA called local CDDA (LCDDA), which aims at handling multimodality in samples. Experimental results revealed that CDDA and LCDDA could extract more discriminative features than FDA and LFDA.
机译:我们提出了一种新的有监督的特征投影方法,称为基于类距离的判别分析(CDDA),它适用于根据面部图像进行自动年龄估计(AAE)。大多数有监督的特征投影方法,例如Fisher判别分析(FDA)和本地Fisher判别分析(LFDA),都集中于确定两个样本是否属于同一类别(即AAE中的相同年龄)。即使估计的年龄与AAE系统中的正确年龄不一致,即AAE系统引起错误,但较小的错误会更好。为了处理AAE中的此类特征,CDDA根据班级距离(即年龄差异)确定班级之间的可分离性;年龄相近的两个样本被强制接近,而年龄相隔一定的样本被强制相距遥远。此外,我们提出了CDDA的扩展,称为本地CDDA(LCDDA),其目的是处理样品中的多模态。实验结果表明,CDDA和LCDDA可以比FDA和LFDA提取更多的鉴别特征。

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