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📄 Abstract
Abstract: We address the task of advertisement image generation and introduce three
evaluation metrics to assess Creativity, prompt Alignment, and Persuasiveness
(CAP) in generated advertisement images. Despite recent advancements in
Text-to-Image (T2I) generation and their performance in generating high-quality
images for explicit descriptions, evaluating these models remains challenging.
Existing evaluation methods focus largely on assessing alignment with explicit,
detailed descriptions, but evaluating alignment with visually implicit prompts
remains an open problem. Additionally, creativity and persuasiveness are
essential qualities that enhance the effectiveness of advertisement images, yet
are seldom measured. To address this, we propose three novel metrics for
evaluating the creativity, alignment, and persuasiveness of generated images.
Our findings reveal that current T2I models struggle with creativity,
persuasiveness, and alignment when the input text is implicit messages. We
further introduce a simple yet effective approach to enhance T2I models'
capabilities in producing images that are better aligned, more creative, and
more persuasive.
Authors (2)
Aysan Aghazadeh
Adriana Kovashka
Submitted
December 10, 2024
Key Contributions
Introduces three novel evaluation metrics (Creativity, prompt Alignment, Persuasiveness - CAP) specifically for advertisement image generation. It highlights the challenges current Text-to-Image models face with implicit prompts, creativity, and persuasiveness, providing a framework to better assess these crucial aspects for marketing applications.
Business Value
Enables more effective use of generative AI in marketing and advertising by providing tools to evaluate and improve the creative and persuasive impact of generated visuals.