Pusan National University Researchers Explore How Generative AI Can Streamline Fashion Design
Generative AI models, like ChatGPT and DALL-E, may help improve fashion design efficiency and reveal emerging and current fashion trends
BUSAN, South Korea, July 17, 2025 /PRNewswire/ -- Generative artificial intelligence (AI) has the potential to revolutionize fashion design. By recognizing patterns in data and generating new text and images, AI models powered by deep learning algorithms can help fashion designers develop new catalogues, expanding creativity and helping bring products to market faster.
Large language models (LLMs) like ChatGPT and AI image generators like DALL-E have shown promising results across industries and popularized the use of AI. In fashion, LLMs can help designers and non-experts understand past styles and predict future fashion trends. These insights can then generate prompts for AI image generators to produce real fashion collections. As such, it is increasingly important to understand how AI can be effectively integrated into fashion.
In a recent study, Professor Yoon Kyung Lee and Master's student Chaehi Ryu, from the Department of Clothing and Textiles at Pusan National University, South Korea, explored how generative AI can contribute to visualizing seasonal fashion trends. "To use AI effectively in fashion, we must understand the characteristics of generative AI models and make informed judgements of where they can be applied," explains Prof. Lee. "In this study, we studied how effective prompt engineering can be used to generate realistic fashion collection images through AI." Their study was published online in the Clothing and Textiles Research Journal on June 22, 2025.
Using ChatGPT-3.5 and ChatGPT-4, the researchers first analyzed men's fashion trends, based on historical data up to September 2021. From this, they used ChatGPT to predict men's fashion trends for Fall/Winter 2024. Design elements from these predictions were classified as "initial codes". In addition, design elements from Vogue's 2024 Fall/Winter Men's Fashion Trend data were used as "modified codes", and those from literature as "codes from literature". These were then regrouped into six final codes: trends, silhouette elements, materials, key items, garment details, and embellishments.
Using these codes, they created 35 prompts for DALL-E 3, each describing a unique outfit. The prompts followed a consistent template featuring a male model walking down a runway at a 2024 Fall/Winter fashion show. The template allowed customization of event details, including aspect ratios, events, camera angles, model appearance and height, runway design, background, and audience details, and moods. Each prompt was run three times, generating a total of 105 images.
DALL-E 3 was able to perfectly implement the prompts 67.6% of the time. Prompts with adjectives demonstrated a high implementation rate. Some generated images closely resembled actual 2024 Fall/Winter Men's fashion collections. However, there were errors—most leaned toward ready-to-wear fashion, and DALL-E struggled with trend elements like gender fluidity. Trend keywords alone were insufficient to generate accurate results, indicating a need for further learning.
"Our results show that expertly worded prompts are necessary for accurate fashion design implementation of generative AI, highlighting the important role of fashion experts," remarks Prof. Lee. "With further learning and improvements, generative AI models like DALL-E 3 will help fashion designers create entire fashion collections more efficiently, while supporting their creativity, and also help non-experts understand fashion trends."
The study shows that generative AI can be a powerful tool not just for professionals but also for the general public, making it easier than ever to explore, predict, and style the upcoming season's fashion with confidence.
Reference
Title of original paper: Effective Fashion Design Collection Implementation with Generative AI: ChatGPT and Dall-E
Journal: Clothing and Textiles Research Journal
DOI: 10.1177/0887302X251348003
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