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SSR-Encoder: Encoding Selective Subject Representation for Subject-Driven Generation

About

Recent advancements in subject-driven image generation have led to zero-shot generation, yet precise selection and focus on crucial subject representations remain challenging. Addressing this, we introduce the SSR-Encoder, a novel architecture designed for selectively capturing any subject from single or multiple reference images. It responds to various query modalities including text and masks, without necessitating test-time fine-tuning. The SSR-Encoder combines a Token-to-Patch Aligner that aligns query inputs with image patches and a Detail-Preserving Subject Encoder for extracting and preserving fine features of the subjects, thereby generating subject embeddings. These embeddings, used in conjunction with original text embeddings, condition the generation process. Characterized by its model generalizability and efficiency, the SSR-Encoder adapts to a range of custom models and control modules. Enhanced by the Embedding Consistency Regularization Loss for improved training, our extensive experiments demonstrate its effectiveness in versatile and high-quality image generation, indicating its broad applicability. Project page: https://ssr-encoder.github.io

Yuxuan Zhang, Yiren Song, Jiaming Liu, Rui Wang, Jinpeng Yu, Hao Tang, Huaxia Li, Xu Tang, Yao Hu, Han Pan, Zhongliang Jing• 2023

Related benchmarks

TaskDatasetResultRank
Subject-driven image generationDreamBench
DINO Score61.2
100
Subject-driven generationDreamBench
DINO Score0.612
28
Disentanglement AnalysisMPI3D complex
DCI Score0.429
14
Textile pattern generationCTP-HD (with Ground Truth)
FID19.69
9
Subject-driven image generationMulti-subject bench
CLIP-T0.302
8
Visual Concept GenerationDisenBench
Mask CLIP-I0.793
7
Compositional generationXVerse Bench
CLIP Score27.72
6
Compositional generationOur Bench
CLIP Score28.61
6
Single-Subject CustomizationMSI-Bench Single-Subject
DINO-I0.67
5
Textile pattern generationVITON-HD (generalization)
LPIPS (VLS)0.513
4
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