Saved in:
Bibliographic Details
Main Authors: Tang, Hao, Xie, Chenwei, Bao, Xiaoyi, Weng, Tingyu, Li, Pandeng, Zheng, Yun, Wang, Liwei
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2507.23278
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866908821411069952
author Tang, Hao
Xie, Chenwei
Bao, Xiaoyi
Weng, Tingyu
Li, Pandeng
Zheng, Yun
Wang, Liwei
author_facet Tang, Hao
Xie, Chenwei
Bao, Xiaoyi
Weng, Tingyu
Li, Pandeng
Zheng, Yun
Wang, Liwei
contents In this paper, we propose UniLIP, a unified framework that adapts CLIP for multimodal understanding, generation and editing. Although CLIP excels at understanding, it lacks reconstruction abilities required to be a unified visual encoder. However, previous CLIP-based unified methods fail to balance understanding and reconstruction, leading to semantic degradation or inconsistent reconstructions. In contrast, we introduce a novel two-stage training scheme with a self-distillation strategy that progressively endows CLIP with high-fidelity reconstruction abilities while preserving its original comprehension performance. For enhanced reasoning and consistency in generation and editing, we further develop a dual-condition architecture built upon the MetaQuery framework. Our architecture jointly utilizes multimodal hidden states for rich contextual details and learnable query embeddings to harness the powerful reasoning abilities of Multimodal Large Language Models (MLLMs). Leveraging advanced image representation and architectural design, UniLIP demonstrates superior instruction following and edit fidelity. With only 1B and 3B parameters, UniLIP can outperform larger unified models such as BAGEL (7B) and Uniworld-V1 (12B), achieving state-of-the-art performance of 0.90 on GenEval, 0.63 on WISE, and 3.94 on ImgEdit. These results demonstrate that UniLIP successfully expands the application of CLIP, establishing its continuous features to not only serve as the optimal choice for understanding tasks but also achieve highly competitive performance in generation and editing tasks. Code and models are available at https://github.com/nnnth/UniLIP.
format Preprint
id arxiv_https___arxiv_org_abs_2507_23278
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle UniLiP: Adapting CLIP for Unified Multimodal Understanding, Generation and Editing
Tang, Hao
Xie, Chenwei
Bao, Xiaoyi
Weng, Tingyu
Li, Pandeng
Zheng, Yun
Wang, Liwei
Computer Vision and Pattern Recognition
In this paper, we propose UniLIP, a unified framework that adapts CLIP for multimodal understanding, generation and editing. Although CLIP excels at understanding, it lacks reconstruction abilities required to be a unified visual encoder. However, previous CLIP-based unified methods fail to balance understanding and reconstruction, leading to semantic degradation or inconsistent reconstructions. In contrast, we introduce a novel two-stage training scheme with a self-distillation strategy that progressively endows CLIP with high-fidelity reconstruction abilities while preserving its original comprehension performance. For enhanced reasoning and consistency in generation and editing, we further develop a dual-condition architecture built upon the MetaQuery framework. Our architecture jointly utilizes multimodal hidden states for rich contextual details and learnable query embeddings to harness the powerful reasoning abilities of Multimodal Large Language Models (MLLMs). Leveraging advanced image representation and architectural design, UniLIP demonstrates superior instruction following and edit fidelity. With only 1B and 3B parameters, UniLIP can outperform larger unified models such as BAGEL (7B) and Uniworld-V1 (12B), achieving state-of-the-art performance of 0.90 on GenEval, 0.63 on WISE, and 3.94 on ImgEdit. These results demonstrate that UniLIP successfully expands the application of CLIP, establishing its continuous features to not only serve as the optimal choice for understanding tasks but also achieve highly competitive performance in generation and editing tasks. Code and models are available at https://github.com/nnnth/UniLIP.
title UniLiP: Adapting CLIP for Unified Multimodal Understanding, Generation and Editing
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2507.23278