Feb. 13, 2024, 5:47 a.m. | Jaeseong Lee Junha Hyung Sohyun Jeong Jaegul Choo

cs.CV updates on arXiv.org arxiv.org

Face swapping has gained significant attention for its varied applications. The majority of previous face swapping approaches have relied on the seesaw game training scheme, which often leads to the instability of the model training and results in undesired samples with blended identities due to the target identity leakage problem. This paper introduces the Shape Agnostic Masked AutoEncoder (SAMAE) training scheme, a novel self-supervised approach designed to enhance face swapping model training. Our training scheme addresses the limitations of traditional …

applications attention autoencoder cs.ai cs.cv face game identity leads masked autoencoder samples training via

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