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Understanding Human Aging Patterns from a Machine Perspective

机译:从机器角度了解人类衰老模式

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摘要

Recent research shows that the aging patterns deeply learned from large-scale data lead to significant performance improvement on age estimation. However, the insight about why and how deep learning models achieved superior performance is inadequate. In this paper, we propose to analyze, visualize and understand the deep aging patterns. We first train a series of convolutional neural networks for age estimation, and then illustrate the learning outcomes using feature maps, activation histograms, and deconvolution. We also develop a visualization method that can compare the facial appearance and track its changes at different ages through the mapping between 2D images and a 3D face template. Our framework provides an innovative way to understand human facial aging process from a machine perspective.
机译:最近的研究表明,从大规模数据中深度学习的老化模式可以显着改善年龄估算的性能。但是,关于深度学习模型为何以及如何实现卓越性能的见解不足。在本文中,我们建议分析,可视化和理解深层老化模式。我们首先训练一系列用于年龄估计的卷积神经网络,然后使用特征图,激活直方图和反卷积来说明学习结果。我们还开发了一种可视化方法,可以通过2D图像和3D面部模板之间的映射比较面部外观并跟踪不同年龄的面部变化。我们的框架提供了一种从机器角度理解人脸老化过程的创新方法。

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