面部表情识别的领域自适应

Juntong Liu, F. Wu, Wenjin Lu, Bai-Ling Zhang
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引用次数: 1

摘要

面部表情识别(FER)是一项从面部表情中识别人类情绪的任务。由于缺乏大型数据集,FER系统的设计非常困难,特别是在现实环境中。本文提出了一种基于相似保持生成对抗网络(SPGAN)的FER数据集增强方法和相应的训练策略。我们借鉴了个人id字段的思想,将数据集扩充看作是一个领域自适应任务。首先在实验室条件数据集和现实世界条件数据集上训练SPGAN生成域适应图像,然后在域适应图像上训练CNN模型。我们在RAF-DB和SFEW 2.0数据集上测试了我们的模型,以显示与基线相比的改进。我们还报告了与其他艺术作品相比,我们的竞争准确性,这显示了有希望的结果。
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Domain Adaption for Facial Expression Recognition
Facial expression recognition (FER) is a task that recognizes human emotions from their facial expressions. Owing to the lack of large datasets, a FER system is difficult to design, especially for real world environment. In this paper, we propose a new dataset augmentation method for FER and the corresponding training strategy by using similarity preserving generative adversarial network (SPGAN). By borrowing the idea from person re-ID field, we consider dataset augmentation as a domain adaptation task. The SPGAN is first trained on a lab condition dataset and a real world condition dataset to generate domain adapted images, and then CNN models are subsequently trained on the domain adapted images. We test our models on the RAF-DB and SFEW 2.0 datasets to show the improvement when compared it to our baseline. We also report our competitive accuracy when compared it with other state of the art works, which shows promissing results.
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