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Age Group Estimation on Single Face Image Using Blocking ULBP and SVM

机译:使用分块ULBP和SVM对单脸图像进行年龄组估计

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Since age implies essential individual information for human beings, age estimation has more and more applications in intelligent human-computer interactions and personalized recommendation in SNS, etc. However, precise age estimation based on single image is difficult due to diverse appearances among people, and irregular quality of sample acquisition. Based on general knowledge that wrinkles increase with age, Uniform Local Binary Patterns (ULBP) is always an effective texture descriptor, but it loses relative location information. In this paper, an age group estimation algorithm is proposed, where after efficient preprocessing, blocking ULBP is used to gain facial textures and a trained multi-class SVM is applied to fulfill age classification. The ages of subjects are divided into five groups: children (0-6), juveniles (7-18), youth (18-40), middle-aged (40-65), and old people (≥66). Experiments are implemented on FG-NET and Morph Aging Database and the estimation accuracy achieves 81.27 %.
机译:由于年龄是人类必不可少的个人信息,因此年龄估计在智能人机交互和SNS中的个性化推荐等方面有越来越多的应用。然而,由于人们的外表各异,基于单个图像的精确年龄估计很困难,并且样品采集质量参差不齐。基于皱纹随年龄增长而增加的一般知识,统一局部二值模式(ULBP)始终是有效的纹理描述符,但会丢失相对位置信息。本文提出了一种年龄组估计算法,该算法经过有效的预处理后,使用分块ULBP来获取面部纹理,并使用经过训练的多类SVM进行年龄分类。受试者的年龄分为五组:儿童(0-6岁),青少年(7-18岁),青年(18-40岁),中年(40-65岁)和老年人(≥66岁)。在FG-NET和Morph Aging Database上进行了实验,估计精度达到81.27%。

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