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Age Estimation by LS-SVM Regression on Facial Images

机译:通过LS-SVM回归对面部图像进行年龄估计

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Determining the age of a person just by using an image of his/her face is a research topic in Computer Vision that is being extensively worked on. In contrast to say expression analysis, age determination is dependent on a number of factors. To construe the real age of a person is an esoteric task. The changes that appear on a face are not only due to aging, but also a number of factors like stress, appropriate rest etc. In this paper an approach has been developed to determine true age of a person by making use of some existing algorithms and combining them for maximum efficiency. The image is represented using an Active Appearance Model (AAM). The AAM uses geometrical ratio of the local face features along with wrinkle analysis. Next, to enhance the feature selection, Principle Component Analysis (PCA) is done. For the learning process a Support Vector Machine is used. Relationships in the image are obtained by making use of binarized statistical image features (BSIF) and the patterns are stored in Local Binary Pattern Histograms (LBPH). This histogram acts as input for the learning unit. The SVM is made to learn the patterns by studying the LBPH. Finally after the learning phase, when a new image is taken, a Least Square-Support Vector Machine Regression model (LS-SVM) is used to predict the final age of the person in the image.
机译:仅通过使用他/她的脸部图像来确定一个人的年龄是计算机视觉中一个正在广泛研究的研究主题。与表达分析相反,年龄确定取决于许多因素。解释一个人的真实年龄是一项深奥的任务。出现在脸上的变化不仅是由于衰老引起的,而且还包括许多因素,例如压力,适当的休息等。在本文中,已经开发出一种方法,可以利用一些现有的算法来确定一个人的真实年龄。将它们结合起来以获得最大效率。使用活动外观模型(AAM)表示图像。 AAM使用局部面部特征的几何比率以及皱纹分析。接下来,为了增强特征选择,完成了主成分分析(PCA)。对于学习过程,使用支持向量机。通过使用二值化统计图像特征(BSIF)获得图像中的关系,并将图案存储在本地二进制图案直方图(LBPH)中。该直方图用作学习单元的输入。通过研究LBPH,可以使SVM学习模式。最后,在学习阶段之后,当拍摄新图像时,将使用最小二乘支持向量机回归模型(LS-SVM)预测图像中人物的最终年龄。

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