TextCrafter: Accurately Rendering Multiple Texts in Complex Visual Scenes

This paper explores the task of Complex Visual Text Generation (CVTG), which centers on generating intricate textual content distributed across diverse regions within visual images. In CVTG, image generation models often rendering distorted and blurred visual text or missing some visual text. To tackle these challenges, we propose TextCrafter, a novel multi-visual text rendering method. TextCrafter employs a progressive strategy to decompose complex visual text into distinct components while ensuring robust alignment between textual content and its visual carrier. Additionally, it incorporates a token focus enhancement mechanism to amplify the prominence of visual text during the generation process. TextCrafter effectively addresses key challenges in CVTG tasks, such as text confusion, omissions, and blurriness. Moreover, we present a new benchmark dataset, CVTG-2K, tailored to rigorously evaluate the performance of generative models on CVTG tasks. Extensive experiments demonstrate that our method surpasses state-of-the-art approaches.
View on arXiv@article{du2025_2503.23461, title={ TextCrafter: Accurately Rendering Multiple Texts in Complex Visual Scenes }, author={ Nikai Du and Zhennan Chen and Zhizhou Chen and Shan Gao and Xi Chen and Zhengkai Jiang and Jian Yang and Ying Tai }, journal={arXiv preprint arXiv:2503.23461}, year={ 2025 } }