Stacked Face De-Noising Auto Encoders for Expression-Robust Face Recognition

Chathurdara Sri Nadith Pathirage, Ling Li, Wanquan Liu, Min Zhang
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引用次数: 10

Abstract

Recent advancement in unsupervised and transfer learning methods of deep learning networks has seen a complete paradigm shift in machine learning. Inspired by the recent evolution of deep learning (DL) networks that demonstrates a proven pathway of addressing challenging dilemmas in various problem domains, we propose a novel DL framework for expression-robust feature acquisition. The framework exploits the contributions of different colour components in different local face regions by recovering the neutral expression from various expressions. Furthermore, the framework rigorously de-noises a face with dynamic expressions in a progressive way thus it is termed as stacked face de-noising auto-encoders (SFDAE). The high-level expression-robust representations that are learnt via this framework will not only yield better reconstruction of neutral expression faces but also boost the performance of the subsequent LDA[1] classifier. The experimental results reveal the superiority of the proposed method to the existing works in terms of its generalization ability and the high recognition accuracy.
用于表情鲁棒性人脸识别的堆叠人脸去噪自动编码器
深度学习网络的无监督学习和迁移学习方法的最新进展已经见证了机器学习的完全范式转变。受深度学习(DL)网络的最新发展的启发,我们提出了一种用于表达鲁棒性特征获取的新型DL框架。该框架通过从各种表情中恢复中性表情,利用不同局部人脸区域中不同颜色成分的贡献。此外,该框架以渐进的方式对具有动态表情的人脸进行严格的去噪,因此被称为堆叠人脸去噪自编码器(SFDAE)。通过该框架学习的高级表达鲁棒表示不仅可以更好地重建中性表情脸,还可以提高后续LDA[1]分类器的性能。实验结果表明,该方法具有较好的泛化能力和较高的识别精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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