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Main Authors: Michelessa, M., Ng, J., Hurter, C., Lim, B. Y.
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2506.19644
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author Michelessa, M.
Ng, J.
Hurter, C.
Lim, B. Y.
author_facet Michelessa, M.
Ng, J.
Hurter, C.
Lim, B. Y.
contents Diversity in image generation is essential to ensure fair representations and support creativity in ideation. Hence, many text-to-image models have implemented diversification mechanisms. Yet, after a few iterations of generation, a lack of diversity becomes apparent, because each user has their own diversity goals (e.g., different colors, brands of cars), and there are diverse attributions to be specified. To support user-driven diversity control, we propose Varif.ai that employs text-to-image and Large Language Models to iteratively i) (re)generate a set of images, ii) verify if user-specified attributes have sufficient coverage, and iii) vary existing or new attributes. Through an elicitation study, we uncovered user needs for diversity in image generation. A pilot validation showed that Varif.ai made achieving diverse image sets easier. In a controlled evaluation with 20 participants, Varif.ai proved more effective than baseline methods across various scenarios. Thus, this supports user control of diversity in image generation for creative ideation and scalable image generation.
format Preprint
id arxiv_https___arxiv_org_abs_2506_19644
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Varif.ai to Vary and Verify User-Driven Diversity in Scalable Image Generation
Michelessa, M.
Ng, J.
Hurter, C.
Lim, B. Y.
Human-Computer Interaction
Diversity in image generation is essential to ensure fair representations and support creativity in ideation. Hence, many text-to-image models have implemented diversification mechanisms. Yet, after a few iterations of generation, a lack of diversity becomes apparent, because each user has their own diversity goals (e.g., different colors, brands of cars), and there are diverse attributions to be specified. To support user-driven diversity control, we propose Varif.ai that employs text-to-image and Large Language Models to iteratively i) (re)generate a set of images, ii) verify if user-specified attributes have sufficient coverage, and iii) vary existing or new attributes. Through an elicitation study, we uncovered user needs for diversity in image generation. A pilot validation showed that Varif.ai made achieving diverse image sets easier. In a controlled evaluation with 20 participants, Varif.ai proved more effective than baseline methods across various scenarios. Thus, this supports user control of diversity in image generation for creative ideation and scalable image generation.
title Varif.ai to Vary and Verify User-Driven Diversity in Scalable Image Generation
topic Human-Computer Interaction
url https://arxiv.org/abs/2506.19644