Innovative Digital Storytelling with AIGC: Exploration and Discussion of
Recent Advances
- URL: http://arxiv.org/abs/2309.14329v2
- Date: Thu, 28 Sep 2023 04:32:07 GMT
- Title: Innovative Digital Storytelling with AIGC: Exploration and Discussion of
Recent Advances
- Authors: Rongzhang Gu, Hui Li, Changyue Su, Wayne Wu
- Abstract summary: Digital storytelling, as an art form, has struggled with cost-quality balance.
The emergence of AI-generated Content (AIGC) is considered as a potential solution for efficient digital storytelling production.
The specific form, effects, and impacts of this fusion remain unclear, leaving the boundaries of AIGC combined with storytelling undefined.
- Score: 27.1985024581788
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Digital storytelling, as an art form, has struggled with cost-quality
balance. The emergence of AI-generated Content (AIGC) is considered as a
potential solution for efficient digital storytelling production. However, the
specific form, effects, and impacts of this fusion remain unclear, leaving the
boundaries of AIGC combined with storytelling undefined. This work explores the
current integration state of AIGC and digital storytelling, investigates the
artistic value of their fusion in a sample project, and addresses common issues
through interviews. Through our study, we conclude that AIGC, while proficient
in image creation, voiceover production, and music composition, falls short of
replacing humans due to the irreplaceable elements of human creativity and
aesthetic sensibilities at present, especially in complex character animations,
facial expressions, and sound effects. The research objective is to increase
public awareness of the current state, limitations, and challenges arising from
combining AIGC and digital storytelling.
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