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Multi-stage classification network for automatic age estimation from facial images

机译:多级分类网络,可根据面部图像自动估算年龄

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Existing age estimation algorithms based on facial images have been showing high dependency on the age range with the range 29-49 yielding the best estimation results. This paper introduces a new multi-stage binary age estimation (MSAE) system configured as a network of decision making neural network (NN) and support vector machine (SVM) units. The decision making process was based on the classification of image features derived by the Orthogonal Locality Preserved Projections (OLPP) and the Sobel Edge Detector (SED) algorithms. The proposed method was tested using the noncommercial version of the MORPH2 database. For male faces, the age estimation results for the MSAE method achieved above 90% of average accuracy for the 26-34 years of age range, and above 80% for 16-26 and 70% for 34-50 years of age. Similar trends were observed for female faces; however the accuracy was slightly lower due to smaller number of valid images.
机译:现有的基于面部图像的年龄估计算法已经显示出对年龄范围的高度依赖性,其中范围29-49产生了最佳估计结果。本文介绍了一种新的多阶段二进制年龄估计(MSAE)系统,该系统配置为决策神经网络(NN)和支持向量机(SVM)单元的网络。决策过程基于图像特征的分类,该图像特征是通过正交局部保留投影(OLPP)和Sobel边缘检测器(SED)算法得出的。使用MORPH2数据库的非商业版本对提出的方法进行了测试。对于男性面孔,MSAE方法的年龄估计结果在26-34岁的年龄范围内达到平均准确率的90%以上,在16-26岁的年龄范围内达到80%以上,在34-50岁的年龄范围内达到70%以上。观察到女性面孔的趋势相似。但是,由于有效图像的数量较少,因此准确性略有降低。

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