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Routinggan: Routing Age Progression and Regression with Disentangled Learning

机译:Routinggan:用解除戒意的学习路由年龄进展和回归

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Although impressive results have been achieved for age progression and regression, there remain two major issues in generative adversarial networks (GANs)-based methods: 1) conditional GANs (cGANs)-based methods can learn various effects between any two age groups in a single model, but are insufficient to characterize some specific patterns due to completely shared convolutions filters; and 2) GANs-based methods can, by utilizing several models to learn effects independently, learn some specific patterns, however, they are cumbersome and require age label in advance. To address these deficiencies and have the best of both worlds, this paper introduces a dropout-like method based on GAN (RoutingGAN) to route different effects in a high-level semantic feature space. Specifically, we first disentangle the age-invariant features from the input face, and then gradually add the effects to the features by residual routers that assign the convolution filters to different age groups by dropping out the outputs of others. As a result, the proposed RoutingGAN can simultaneously learn various effects in a single model, with convolution filters being shared in part to learn some specific effects. Experimental results on two benchmarked datasets demonstrate superior performance over existing methods both qualitatively and quantitatively.
机译:虽然年龄进展和回归已经实现了令人印象深刻的结果,但在生成的对抗网络(GANS)的方法中仍有两个主要问题:1)条件GANS(CGANS)的方法可以在单一的任何两个年龄组之间学习各种影响模型,但由于完全共享的卷积滤波器,不足以表征一些特定模式; 2)基于GAN的方法可以通过利用多种模型独立学习效果,但学习一些特定的模式,然而,它们是麻烦的,需要提前使用年龄标签。为解决这些缺陷并拥有两全其美,本文介绍了一种基于GaN(Routinggan)的丢弃方法,以在高级语义特征空间中路由不同效果。具体来说,我们首先解开来自输入面的年龄不变的功能,然后通过丢弃其他人的输出将卷积滤波器分配给不同年龄组的剩余路由器来逐步向功能添加效果。因此,所提出的Routinggan可以在单个模型中同时学习各种效果,卷积过滤器部分分享以学习某些特定​​效果。两个基准数据集上的实验结果表明了定性和定量的现有方法的卓越性能。

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