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Deep Face Swapping via Cross-Identity Adversarial Training

  • 2021
  • OriginalPaper
  • Chapter
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Abstract

This chapter delves into the latest developments in face swapping technology, highlighting the challenges and limitations of existing auto-encoder based methods. It introduces a groundbreaking cross-identity adversarial training framework designed to address these issues. By incorporating spatial attention mechanisms and robust adversarial training strategies, the proposed approach achieves highly realistic face swapping results, even in complex illumination conditions. The chapter presents extensive experiments and quantitative analyses, demonstrating the superior performance of the proposed method over state-of-the-art techniques. Additionally, it explores the model's robustness in challenging scenarios such as cross-gender and cross-race face swapping, showcasing its potential in diverse applications across various industries.
Supported by the Shanghai Key Laboratory of Digital Media Processing and Transmissions, 111 Project (B07022 and Sheitc No. 150633).

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Title
Deep Face Swapping via Cross-Identity Adversarial Training
Authors
Shuhui Yang
Han Xue
Jun Ling
Li Song
Rong Xie
Copyright Year
2021
DOI
https://doi.org/10.1007/978-3-030-67835-7_7
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