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Main Authors: Zhang, Songsong, Tang, Chuanqi, Zhang, Hongguang, Tang, Guijian, Li, Minglong, Li, Xueqiong, Yang, Shaowu, Peng, Yuanxi, Yang, Wenjing, Zhao, Jing
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.11989
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author Zhang, Songsong
Tang, Chuanqi
Zhang, Hongguang
Tang, Guijian
Li, Minglong
Li, Xueqiong
Yang, Shaowu
Peng, Yuanxi
Yang, Wenjing
Zhao, Jing
author_facet Zhang, Songsong
Tang, Chuanqi
Zhang, Hongguang
Tang, Guijian
Li, Minglong
Li, Xueqiong
Yang, Shaowu
Peng, Yuanxi
Yang, Wenjing
Zhao, Jing
contents Identity-Preserving Personalized Generation (IPPG) has advanced film production and artistic creation, yet existing approaches overemphasize facial regions, resulting in outputs dominated by facial close-ups.These methods suffer from weak visual narrativity and poor semantic consistency under complex text prompts, with the core limitation rooted in identity (ID) feature embeddings undermining the semantic expressiveness of generative models. To address these issues, this paper presents an IPPG method that breaks the constraint of facial close-ups, achieving synergistic optimization of identity fidelity and scene semantic creation. Specifically, we design a Dual-Line Inference (DLI) pipeline with identity-semantic separation, resolving the representation conflict between ID and semantics inherent in traditional single-path architectures. Further, we propose an Identity Adaptive Fusion (IdAF) strategy that defers ID-semantic fusion to the noise prediction stage, integrating adaptive attention fusion and noise decision masking to avoid ID embedding interference on semantics without manual masking. Finally, an Identity Aggregation Prepending (IdAP) module is introduced to aggregate ID information and replace random initializations, further enhancing identity preservation. Experimental results validate that our method achieves stable and effective performance in IPPG tasks beyond facial close-ups, enabling efficient generation without manual masking or fine-tuning. As a plug-and-play component, it can be rapidly deployed in existing IPPG frameworks, addressing the over-reliance on facial close-ups, facilitating film-level character-scene creation, and providing richer personalized generation capabilities for related domains.
format Preprint
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institution arXiv
publishDate 2025
record_format arxiv
spellingShingle BeyondFacial: Identity-Preserving Personalized Generation Beyond Facial Close-ups
Zhang, Songsong
Tang, Chuanqi
Zhang, Hongguang
Tang, Guijian
Li, Minglong
Li, Xueqiong
Yang, Shaowu
Peng, Yuanxi
Yang, Wenjing
Zhao, Jing
Computer Vision and Pattern Recognition
Identity-Preserving Personalized Generation (IPPG) has advanced film production and artistic creation, yet existing approaches overemphasize facial regions, resulting in outputs dominated by facial close-ups.These methods suffer from weak visual narrativity and poor semantic consistency under complex text prompts, with the core limitation rooted in identity (ID) feature embeddings undermining the semantic expressiveness of generative models. To address these issues, this paper presents an IPPG method that breaks the constraint of facial close-ups, achieving synergistic optimization of identity fidelity and scene semantic creation. Specifically, we design a Dual-Line Inference (DLI) pipeline with identity-semantic separation, resolving the representation conflict between ID and semantics inherent in traditional single-path architectures. Further, we propose an Identity Adaptive Fusion (IdAF) strategy that defers ID-semantic fusion to the noise prediction stage, integrating adaptive attention fusion and noise decision masking to avoid ID embedding interference on semantics without manual masking. Finally, an Identity Aggregation Prepending (IdAP) module is introduced to aggregate ID information and replace random initializations, further enhancing identity preservation. Experimental results validate that our method achieves stable and effective performance in IPPG tasks beyond facial close-ups, enabling efficient generation without manual masking or fine-tuning. As a plug-and-play component, it can be rapidly deployed in existing IPPG frameworks, addressing the over-reliance on facial close-ups, facilitating film-level character-scene creation, and providing richer personalized generation capabilities for related domains.
title BeyondFacial: Identity-Preserving Personalized Generation Beyond Facial Close-ups
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2511.11989