Collaborative Comic Generation: Integrating Visual Narrative Theories with AI Models for Enhanced Creativity
Abstract
This study presents a theory-inspired visual narrative generative system that integrates conceptual principles-comic authoring idioms-with generative and language models to enhance the comic creation process. Our system combines human creativity with AI models to support parts of the generative process, providing a collaborative platform for creating comic content. These comic-authoring idioms, derived from prior human-created image sequences, serve as guidelines for crafting and refining storytelling. The system translates these principles into system layers that facilitate comic creation through sequential decision-making, addressing narrative elements such as panel composition, story tension changes, and panel transitions. Key contributions include integrating machine learning models into the human-AI cooperative comic generation process, deploying abstract narrative theories into AI-driven comic creation, and a customizable tool for narrative-driven image sequences. This approach improves narrative elements in generated image sequences and engages human creativity in an AI-generative process of comics. We open-source the code at https://github.com/RimiChen/Collaborative_Comic_Generation.
Cite
@article{arxiv.2409.17263,
title = {Collaborative Comic Generation: Integrating Visual Narrative Theories with AI Models for Enhanced Creativity},
author = {Yi-Chun Chen and Arnav Jhala},
journal= {arXiv preprint arXiv:2409.17263},
year = {2024}
}
Comments
This paper has been accepted for oral presentation at CREAI2024, ECAI, 2024. However, the author's attendance is currently uncertain due to visa issues