IEEE Access (Jan 2023)

SegTex: A Large Scale Synthetic Face Dataset for Face Recognition

  • Laudwika Ambardi,
  • Sungeun Hong,
  • In Kyu Park

DOI
https://doi.org/10.1109/ACCESS.2023.3336405
Journal volume & issue
Vol. 11
pp. 131939 – 131949

Abstract

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Face recognition remains challenged by data limitations in both scale and diversity, coupled with the ethical dilemmas of using images without the subjects’ consent. To address these issues, this paper presents the SegTex framework, a cutting-edge method for generating synthetic face datasets by converting Segmentation maps into Textured images. Using the CelebAHQ-Mask dataset for segmentation maps and extracting facial features from the CelebAMask-HQ dataset, the SegTex method efficiently creates varied synthetic facial characteristics. This approach not only sidesteps the need for real-world data collection but also offers a rich and diverse dataset, essential for improving face recognition algorithm performance. In our experiments, models trained on the SegTex-generated dataset displayed superior performance metrics when compared to those trained on conventional datasets, underscoring the practical utility of our method. This robust performance, combined with the ethical advantages of synthetic data generation, ensures our approach holds significant importance in the field of face recognition.

Keywords