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基于深度流形学习的人脸年龄识别。

Facial age recognition based on deep manifold learning.

机构信息

Pujiang Institute, Nanjing Tech University, Nanjing 211200, China.

出版信息

Math Biosci Eng. 2024 Feb 28;21(3):4485-4500. doi: 10.3934/mbe.2024198.

Abstract

Facial age recognition has been widely used in real-world applications. Most of current facial age recognition methods use deep learning to extract facial features to identify age. However, due to the high dimension features of faces, deep learning methods might extract a lot of redundant features, which is not beneficial for facial age recognition. To improve facial age recognition effectively, this paper proposed the deep manifold learning (DML), a combination of deep learning and manifold learning. In DML, deep learning was used to extract high-dimensional facial features, and manifold learning selected age-related features from these high-dimensional facial features for facial age recognition. Finally, we validated the DML on Multivariate Observations of Reactions and Physical Health (MORPH) and Face and Gesture Recognition Network (FG-NET) datasets. The results indicated that the mean absolute error (MAE) of MORPH is 1.60 and that of FG-NET is 2.48. Moreover, compared with the state of the art facial age recognition methods, the accuracy of DML has been greatly improved.

摘要

面部年龄识别已被广泛应用于现实生活中。目前大多数面部年龄识别方法都使用深度学习来提取面部特征以识别年龄。然而,由于人脸的高维特征,深度学习方法可能会提取出很多冗余的特征,这对人脸年龄识别是不利的。为了有效地提高面部年龄识别,本文提出了深度流形学习(DML),它是深度学习和流形学习的结合。在 DML 中,深度学习用于提取高维人脸特征,而流形学习则从这些高维人脸特征中选择与年龄相关的特征用于人脸年龄识别。最后,我们在多变量观察反应和身体健康(MORPH)和面部和手势识别网络(FG-NET)数据集上验证了 DML。结果表明,MORPH 的平均绝对误差(MAE)为 1.60,FG-NET 的为 2.48。此外,与最先进的面部年龄识别方法相比,DML 的准确率得到了很大的提高。

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