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Main Authors: Ryu, Jongwon, Park, Joonhyung, Han, Jaeho, Kim, Yeong-Seok, Kim, Hye-rin, Yoon, Sunjae, Kim, Junyeong
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.07221
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author Ryu, Jongwon
Park, Joonhyung
Han, Jaeho
Kim, Yeong-Seok
Kim, Hye-rin
Yoon, Sunjae
Kim, Junyeong
author_facet Ryu, Jongwon
Park, Joonhyung
Han, Jaeho
Kim, Yeong-Seok
Kim, Hye-rin
Yoon, Sunjae
Kim, Junyeong
contents Multi-domain image-to-image translation re quires grounding semantic differences ex pressed in natural language prompts into corresponding visual transformations, while preserving unrelated structural and seman tic content. Existing methods struggle to maintain structural integrity and provide fine grained, attribute-specific control, especially when multiple domains are involved. We propose LACE (Language-grounded Attribute Controllable Translation), built on two compo nents: (1) a GLIP-Adapter that fuses global semantics with local structural features to pre serve consistency, and (2) a Multi-Domain Control Guidance mechanism that explicitly grounds the semantic delta between source and target prompts into per-attribute translation vec tors, aligning linguistic semantics with domain level visual changes. Together, these modules enable compositional multi-domain control with independent strength modulation for each attribute. Experiments on CelebA(Dialog) and BDD100K demonstrate that LACE achieves high visual fidelity, structural preservation, and interpretable domain-specific control, surpass ing prior baselines. This positions LACE as a cross-modal content generation framework bridging language semantics and controllable visual translation.
format Preprint
id arxiv_https___arxiv_org_abs_2601_07221
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Language-Grounded Multi-Domain Image Translation via Semantic Difference Guidance
Ryu, Jongwon
Park, Joonhyung
Han, Jaeho
Kim, Yeong-Seok
Kim, Hye-rin
Yoon, Sunjae
Kim, Junyeong
Computer Vision and Pattern Recognition
Multi-domain image-to-image translation re quires grounding semantic differences ex pressed in natural language prompts into corresponding visual transformations, while preserving unrelated structural and seman tic content. Existing methods struggle to maintain structural integrity and provide fine grained, attribute-specific control, especially when multiple domains are involved. We propose LACE (Language-grounded Attribute Controllable Translation), built on two compo nents: (1) a GLIP-Adapter that fuses global semantics with local structural features to pre serve consistency, and (2) a Multi-Domain Control Guidance mechanism that explicitly grounds the semantic delta between source and target prompts into per-attribute translation vec tors, aligning linguistic semantics with domain level visual changes. Together, these modules enable compositional multi-domain control with independent strength modulation for each attribute. Experiments on CelebA(Dialog) and BDD100K demonstrate that LACE achieves high visual fidelity, structural preservation, and interpretable domain-specific control, surpass ing prior baselines. This positions LACE as a cross-modal content generation framework bridging language semantics and controllable visual translation.
title Language-Grounded Multi-Domain Image Translation via Semantic Difference Guidance
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2601.07221