An Automatic Facial Age Proression Estimation System

Othman Omran Khalifa, Ayub Ahmed Omar, M. Z. Ahmed, R. Saeed, A. Hashim, A.N. Esgiar
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引用次数: 2

Abstract

Linear age progression models which are largely used in prototype and conventional approaches usually produce synthesized images that are lack of quality because of the aging variations. Therefore, in this paper, a facial age progression model that captures non-linear age variances is designed by using a deep learning-based method called Generative Adversarial Network. The proposed face aging model aims to achieve convincing and visually plausible aging effects by controlling the age attribute. The model first maps the face via a convolutional encoder to a latent vector, then the vector is projected by a deconvolutional generator to the face manifold based on age, and finally the encoder and the generator are imposed on two adversarial networks respectively. The proposed model is trained on UTKFace dataset using Pytorch machine learning library. The experimental results demonstrate the capability of the proposed Generative Advanced Network (GAN) model of generating photorealistic aging faces and preserving the original identity property.
一种面部年龄自动估计系统
线性年龄递进模型在原型和常规方法中广泛使用,由于年龄的变化,通常产生的合成图像质量较差。因此,在本文中,使用一种称为生成对抗网络的基于深度学习的方法设计了一个捕捉非线性年龄方差的面部年龄进展模型。所提出的人脸老化模型旨在通过对年龄属性的控制,达到令人信服、视觉上似是而非的衰老效果。该模型首先通过卷积编码器将人脸映射到潜在向量上,然后通过反卷积生成器根据年龄将该向量投影到人脸流形上,最后将编码器和生成器分别施加到两个对抗网络上。该模型使用Pytorch机器学习库在UTKFace数据集上进行训练。实验结果证明了所提出的生成高级网络(GAN)模型能够生成逼真的老化人脸并保持原始身份属性。
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