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Facial age estimation using pre-trained CNN and transfer learning

机译:使用预先训练的CNN和转移学习的面部年龄估计

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摘要

This paper tackled the problem of human facial age estimation using transfer learning of some pre-trained CNNs, namely VGG, Res-Net, Google-Net, and Alex-Net. Those networks have been fine-tuned with transfer learning and undergone many experiments to get the optimum number of outputs and the optimum age gap. Based on those experiments, a novel hierarchical network that generates high age estimation accuracy was developed. This new network consists of a set of pre-trained 2-classes CNNs (Google-Net) with an optimum age gap which can better organize the face images in the age group they belong to. To show its effectiveness, it was compared with other states of the art techniques on the FGNET and the MORPH databases.
机译:本文使用一些预先培训的CNNS,即VGG,RES-NET,Google-Net和Alex-Net的转移学习解决了人类面部年龄估计问题。 这些网络已经进行了微调,随着转移学习和经历了许多实验,以获得最佳输出数和最佳年龄差距。 基于这些实验,开发了一种产生高年龄估计准确性的新型等级网络。 这个新网络由一组预先训练的2级CNN(Google-net)组成,具有最佳年龄差距,可以更好地组织他们所属的年龄组中的脸部图像。 为了表明其有效性,与FGNET和Morph数据库的其他状态进行了比较。

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