CVNov 4, 2024

Digi2Real: Bridging the Realism Gap in Synthetic Data Face Recognition via Foundation Models

arXiv:2411.02188v47 citationsh-index: 112025 IEEE/CVF Winter Conference on Applications of Computer Vision Workshops (WACVW)
Originality Incremental advance
AI Analysis

This work addresses privacy and ethical concerns in face recognition by improving synthetic data realism, though it is incremental as it builds on existing synthetic datasets and enhancement techniques.

The paper tackles the problem of poor performance in face recognition systems trained on synthetic data due to lack of realism, and introduces a framework that enhances synthetic face images using a foundation model, resulting in significant performance improvements over baselines.

The accuracy of face recognition systems has improved significantly in the past few years, thanks to the large amount of data collected and advancements in neural network architectures. However, these large-scale datasets are often collected without explicit consent, raising ethical and privacy concerns. To address this, there have been proposals to use synthetic datasets for training face recognition models. Yet, such models still rely on real data to train the generative models and generally exhibit inferior performance compared to those trained on real datasets. One of these datasets, DigiFace, uses a graphics pipeline to generate different identities and intra-class variations without using real data in model training. However, the performance of this approach is poor on face recognition benchmarks, possibly due to the lack of realism in the images generated by the graphics pipeline. In this work, we introduce a novel framework for realism transfer aimed at enhancing the realism of synthetically generated face images. Our method leverages the large-scale face foundation model, and we adapt the pipeline for realism enhancement. By integrating the controllable aspects of the graphics pipeline with our realism enhancement technique, we generate a large amount of realistic variations, combining the advantages of both approaches. Our empirical evaluations demonstrate that models trained using our enhanced dataset significantly improve the performance of face recognition systems over the baseline. The source code and dataset will be publicly accessible at the following link: https://www.idiap.ch/paper/digi2real

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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