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首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >Age Estimation Using Aging/Rejuvenation Features With Device-Edge Synergy
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Age Estimation Using Aging/Rejuvenation Features With Device-Edge Synergy

机译:使用带有设备边缘协同作用的老化/复合功能的年龄估计

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Estimating human age is a challenging task in computer vision and most researchers are trying to make age estimation via a static facial image. However, it ignores the fact that the age of a person is the specific representation of aging. In this paper, we attempt to explore the aging/rejuvenation (AR) characteristics of faces for age estimation and we called the whole network as AR-Net. Firstly, we use GAN model for learning a manifold of the aging/rejuvenation process to a face dataset with preserving personalized face features (e.g., gender, race). Secondly, we seek the correlated aging/rejuvenation characteristics from a narrow age interval, (e. g., ((0-100) -> (0-5), (5-10), ... , (90-100)). Thirdly, the fine-tuned GAN is used to generate aging/rejuvenation features of all age groups and these features are applied to train corresponding ELM regressors. AR-Net is deployed on every edge server, and all AR-Nets are trained offline. Afterwards, our AR-Net is constantly updated based on the face dataset collected by the edge sensors. Finally, enormous experiments on Morph-II, CACD, and captured facial dataset have been conducted to verify the performance of our fine-tuned AR-Net and the experimental results show that the approach enhanced than the current state of the art methods.
机译:估计人类年龄是计算机愿景的具有挑战性的任务,大多数研究人员正试图通过静态面部形象进行年龄估计。但是,它忽略了一个人的年龄是老龄化的具体代表性。在本文中,我们试图探索年龄估计的面孔的老化/复兴(AR)特征,我们称整个网络为AR-Net。首先,我们使用GaN模型来学习衰老/复合过程的歧管,以保护个性化面部特征(例如,性别,比赛)。其次,我们寻求从狭窄的年龄间隔的相关老化/再生特征(例如((0-100) - >(0-5),(5-10),...,(90-100))。第三,微调GaN用于生成所有年龄组的老化/恢复功能,这些功能适用于培训相应的ELM回归。AR-NET部署在每个边缘服务器上,所有AR网都均触摸训练。之后,我们的AR-NET基于边缘传感器收集的面部数据集不断更新。最后,已经进行了在Morph-II,CACD和捕获的面部数据集上进行了巨大的实验,以验证我们的微调AR-Net和实验结果表明,该方法增强了最新的现有技术。

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