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Poetry2Image: An Iterative Correction Framework for Images Generated from Chinese Classical Poetry

Authors :
Jiang, Jing
Ling, Yiran
Li, Binzhu
Li, Pengxiang
Piao, Junming
Zhang, Yu
Publication Year :
2024

Abstract

Text-to-image generation models often struggle with key element loss or semantic confusion in tasks involving Chinese classical poetry.Addressing this issue through fine-tuning models needs considerable training costs. Additionally, manual prompts for re-diffusion adjustments need professional knowledge. To solve this problem, we propose Poetry2Image, an iterative correction framework for images generated from Chinese classical poetry. Utilizing an external poetry dataset, Poetry2Image establishes an automated feedback and correction loop, which enhances the alignment between poetry and image through image generation models and subsequent re-diffusion modifications suggested by large language models (LLM). Using a test set of 200 sentences of Chinese classical poetry, the proposed method--when integrated with five popular image generation models--achieves an average element completeness of 70.63%, representing an improvement of 25.56% over direct image generation. In tests of semantic correctness, our method attains an average semantic consistency of 80.09%. The study not only promotes the dissemination of ancient poetry culture but also offers a reference for similar non-fine-tuning methods to enhance LLM generation.<br />Comment: 13 pages, 7 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2407.06196
Document Type :
Working Paper