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Main Authors: Cao, Gengxian, Li, Fengyuan, Duan, Hong, Yang, Ye, Wang, Bofeng, Li, Donghe
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2504.15552
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author Cao, Gengxian
Li, Fengyuan
Duan, Hong
Yang, Ye
Wang, Bofeng
Li, Donghe
author_facet Cao, Gengxian
Li, Fengyuan
Duan, Hong
Yang, Ye
Wang, Bofeng
Li, Donghe
contents This paper introduces a novel multi-Agent framework that automates the end to end production of Qinqiang opera by integrating Large Language Models , visual generation, and Text to Speech synthesis. Three specialized agents collaborate in sequence: Agent1 uses an LLM to craft coherent, culturally grounded scripts;Agent2 employs visual generation models to render contextually accurate stage scenes; and Agent3 leverages TTS to produce synchronized, emotionally expressive vocal performances. In a case study on Dou E Yuan, the system achieved expert ratings of 3.8 for script fidelity, 3.5 for visual coherence, and 3.8 for speech accuracy-culminating in an overall score of 3.6, a 0.3 point improvement over a Single Agent baseline. Ablation experiments demonstrate that removing Agent2 or Agent3 leads to drops of 0.4 and 0.5 points, respectively, underscoring the value of modular collaboration. This work showcases how AI driven pipelines can streamline and scale the preservation of traditional performing arts, and points toward future enhancements in cross modal alignment, richer emotional nuance, and support for additional opera genres.
format Preprint
id arxiv_https___arxiv_org_abs_2504_15552
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Multi-Agent Framework for Automated Qinqiang Opera Script Generation Using Large Language Models
Cao, Gengxian
Li, Fengyuan
Duan, Hong
Yang, Ye
Wang, Bofeng
Li, Donghe
Artificial Intelligence
This paper introduces a novel multi-Agent framework that automates the end to end production of Qinqiang opera by integrating Large Language Models , visual generation, and Text to Speech synthesis. Three specialized agents collaborate in sequence: Agent1 uses an LLM to craft coherent, culturally grounded scripts;Agent2 employs visual generation models to render contextually accurate stage scenes; and Agent3 leverages TTS to produce synchronized, emotionally expressive vocal performances. In a case study on Dou E Yuan, the system achieved expert ratings of 3.8 for script fidelity, 3.5 for visual coherence, and 3.8 for speech accuracy-culminating in an overall score of 3.6, a 0.3 point improvement over a Single Agent baseline. Ablation experiments demonstrate that removing Agent2 or Agent3 leads to drops of 0.4 and 0.5 points, respectively, underscoring the value of modular collaboration. This work showcases how AI driven pipelines can streamline and scale the preservation of traditional performing arts, and points toward future enhancements in cross modal alignment, richer emotional nuance, and support for additional opera genres.
title A Multi-Agent Framework for Automated Qinqiang Opera Script Generation Using Large Language Models
topic Artificial Intelligence
url https://arxiv.org/abs/2504.15552