Chrome Extension
WeChat Mini Program
Use on ChatGLM

Denoising-Based Decoupling-Contrastive Learning for Ubiquitous Synthetic Face Images

Yupeng Zhu, Xinyi Shen, Peilun Du

IEEE Access(2023)

Cited 0|Views6
No score
Abstract
With the improvement of generative models such as GPT-4, GANs, and diffusion models, synthetic face images are increasingly pervading the current digital environment. Various face editing software based on generative models is already commercially available, which can edit face image attributes, including changing age, makeup, hair, scars, gender, etc. Existing face recognition methods tend to employ synthetic face images to augment datasets during large-scale training. However, the involvement of low-quality synthetic data can impair the feature extraction ability, consequently affecting recognition performance. Furthermore, face editing can potentially be applied for illegal or criminal purposes, such as criminals uploading edited face images to disguise themselves, thereby reducing the accuracy of face recognition models. To mitigate the negative impact of synthetic face images, we propose a denoising-based decoupling-contrastive learning (DDCL) method for extracting more benign features from synthetic data. By designing a siamese network structure with two branches, the framework extracts robust features from natural and synthetic images with the contrastive learning mechanism. Subsequently, the bi-directional coding-based feature decoupling module filters out features of synthetic images before proceeding to identity recognition. Experimental results demonstrate that our method can alleviate the negative impact of synthetic face images and achieve the highest recognition accuracy for both synthetic and natural data.
More
Translated text
Key words
Face recognition,Feature extraction,Synthetic data,Training,Data models,Task analysis,face editing,contrastive learning,feature decoupling
AI Read Science
Must-Reading Tree
Example
Generate MRT to find the research sequence of this paper
Chat Paper
Summary is being generated by the instructions you defined