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Age Estimation via Fusion of Depthwise Separable Convolutional Neural Networks

机译:深度可分离卷积神经网络融合的年龄估计

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In this paper, a deep Convolutional Neural Network CNN based system, called Depthwise Separable Convolutional Neural Network (DSCNN) fusion system, for human facial age estimation is presented. This system includes following four stages. In the first stage, a data augmentation procedure is utilized to enrich the dataset. In the second stage, a pre-trained deep CNN model is fine-tuned for the gender classification task. For the third stage, three newly designed DSCNN age estimators are utilized to conduct gender-specific age estimation for gender grouped facial images from previous stage. The architectures of these three deep DSCNNs are constructed to lower computation complexity. In the last stage, estimated ages from three DSCNN age estimators are fed to the fuser to boost the overall age estimation performance. In the experimental results, on four benchmark datasets, IMDB-WIKI, MORPH-II, and ChaLearn LAP Apparent age V1 and V2, the proposed system demonstrates a significant performance improvement over the state-of-the-art deep CNN models and methods.
机译:本文提出了一种基于深度卷积神经网络CNN的系统,称为深度可分离卷积神经网络(DSCNN)融合系统,用于人类面部年龄估计。该系统包括以下四个阶段。在第一阶段,利用数据扩充程序来丰富数据集。在第二阶段,针对性别分类任务微调了预训练的深度CNN模型。对于第三阶段,三个新设计的DSCNN年龄估计器用于对来自上一阶段的按性别分组的面部图像进行按性别划分的年龄估计。这三个深层DSCNN的体系结构旨在降低计算复杂度。在最后阶段,将三个DSCNN年龄估算器的估算年龄馈入热熔器,以提高总体年龄估算性能。在实验结果中,在四个基准数据集(IMDB-WIKI,MORPH-II和ChaLearn LAP表观年龄V1和V2)上,所提出的系统证明了与最新深层CNN模型和方法相比的显着性能改进。

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