Semantic Data Augmentation for Long-tailed Facial Expression Recognition
- URL: http://arxiv.org/abs/2411.17254v1
- Date: Tue, 26 Nov 2024 09:31:12 GMT
- Title: Semantic Data Augmentation for Long-tailed Facial Expression Recognition
- Authors: Zijian Li, Yan Wang, Bowen Guan, JianKai Yin,
- Abstract summary: We propose a novel semantic augmentation method for Facial Expression Recognition.
Our method can be used in not only FER tasks, but also more diverse data-hungry scenarios.
- Score: 4.912577183275402
- License:
- Abstract: Facial Expression Recognition has a wide application prospect in social robotics, health care, driver fatigue monitoring, and many other practical scenarios. Automatic recognition of facial expressions has been extensively studied by the Computer Vision research society. But Facial Expression Recognition in real-world is still a challenging task, partially due to the long-tailed distribution of the dataset. Many recent studies use data augmentation for Long-Tailed Recognition tasks. In this paper, we propose a novel semantic augmentation method. By introducing randomness into the encoding of the source data in the latent space of VAE-GAN, new samples are generated. Then, for facial expression recognition in RAF-DB dataset, we use our augmentation method to balance the long-tailed distribution. Our method can be used in not only FER tasks, but also more diverse data-hungry scenarios.
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