A Framework for Critical Evaluation of Text-to-Image Models: Integrating Art Historical Analysis, Artistic Exploration, and Critical Prompt Engineering
Journal:
arXiv
Published Date:
Dec 17, 2024
Abstract
This paper proposes a novel interdisciplinary framework for the critical
evaluation of text-to-image models, addressing the limitations of current
technical metrics and bias studies. By integrating art historical analysis,
artistic exploration, and critical prompt engineering, the framework offers a
more nuanced understanding of these models' capabilities and societal
implications. Art historical analysis provides a structured approach to examine
visual and symbolic elements, revealing potential biases and
misrepresentations. Artistic exploration, through creative experimentation,
uncovers hidden potentials and limitations, prompting critical reflection on
the algorithms' assumptions. Critical prompt engineering actively challenges
the model's assumptions, exposing embedded biases. Case studies demonstrate the
framework's practical application, showcasing how it can reveal biases related
to gender, race, and cultural representation. This comprehensive approach not
only enhances the evaluation of text-to-image models but also contributes to
the development of more equitable, responsible, and culturally aware AI
systems.