This study investigates how AI image generation plat-forms develop distinct platform vernaculars systematic visual languages with recognizable aesthetic signatures that create new forms of cultural bias. Through mixed-methods analysis combining content analysis of 306 AI-generated images, interviews with 16 visual professionals, and survey validation from 430 respondents, we document three key phenomena. First, platform choice ac-counts for 54% of variance in visual outcomes (η² = 0.542, p < 0.001), with professionals achieving distinct recognition accuracy: Flux (82%), Midjourney (78%), Stable Diffusion (71%). Second, rather than displacement, 71.9% of professionals report AI enhances creative capabilities through strategic integration models. Third, systematic cultural bias manifests through 73% Western demographic defaults in neutral prompts, though professionals develop sophisticated mitigation strategies achieving 82% bias reduction effectiveness. These findings establish platform vernaculars as algorithmic aesthetic hierarchies that require new forms of visual literacy, challenging assumptions about AI homogenization while revealing persistent representational inequities demanding professional resistance strategies.
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Justin Varghese
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Justin Varghese (Wed,) studied this question.
www.synapsesocial.com/papers/68f12bfb2107091eab27a4ab — DOI: https://doi.org/10.1609/aies.v8i3.36799