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Few-Shot Generative Model Adaption via Identity Injection and Preservation

About

Training generative models with limited data presents severe challenges of mode collapse. A common approach is to adapt a large pretrained generative model upon a target domain with very few samples (fewer than 10), known as few-shot generative model adaptation. However, existing methods often suffer from forgetting source domain identity knowledge during adaptation, which degrades the quality of generated images in the target domain. To address this, we propose Identity Injection and Preservation (I$^2$P), which leverages identity injection and consistency alignment to preserve the source identity knowledge. Specifically, we first introduce an identity injection module that integrates source domain identity knowledge into the target domain's latent space, ensuring the generated images retain key identity knowledge of the source domain. Second, we design an identity substitution module, which includes a style-content decoupler and a reconstruction modulator, to further enhance source domain identity preservation. We enforce identity consistency constraints by aligning features from identity substitution, thereby preserving identity knowledge. Both quantitative and qualitative experiments show that our method achieves substantial improvements over state-of-the-art methods on multiple public datasets and 5 metrics.

Yeqi He, Liang Li, Jiehua Zhang, Yaoqi Sun, Xichun Sheng, Zhidong Zhao, Chenggang Yan• 2026

Related benchmarks

TaskDatasetResultRank
Image GenerationMetFaces
FID69.2
13
Intra-category image generationFFHQ sunglasses
FID39.4
12
Image GenerationFFHQ → Babies
FID70.39
8
Image GenerationSketches
FID38.16
8
Face Style TransferFFHQ → Babies
DINO Similarity63.9
4
Face Style TransferMetFaces
DINO61.8
4
Face Style TransferSketches
DINO Similarity Score0.6
4
Face Style TransferFFHQ sunglasses
DINO Similarity0.771
4
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