LBFTI decomposes faces into three layers with dedicated generators and a three-stage training process to invert templates into fine-grained, identity-preserving images, claiming 25.3% better TAR than prior methods.
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LBFTI: Layer-Based Facial Template Inversion for Identity-Preserving Fine-Grained Face Reconstruction
LBFTI decomposes faces into three layers with dedicated generators and a three-stage training process to invert templates into fine-grained, identity-preserving images, claiming 25.3% better TAR than prior methods.
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