AutoSpark: Supporting Automobile Appearance Design Ideation with Kansei Engineering and Generative AI

Abstract

Rapid creation of novel product appearance designs that align with consumer emotional requirements poses a significant challenge. Text-to-image models, with their excellent image generation capabilities, have demonstrated potential in providing inspiration to designers. However, designers still encounter issues including aligning emotional needs, expressing design intentions, and comprehending generated outcomes in practical applications. To address these challenges, we introduce AutoSpark, an interactive system that integrates Kansei Engineering and generative AI to provide creativity support for designers in creating automobile appearance designs that meet emotional needs. AutoSpark employs a Kansei Engineering engine powered by generative AI and a semantic network to assist designers in emotional need alignment, design intention expression, and prompt crafting. It also facilitates designers’ understanding and iteration of generated results through fine-grained image-image similarity comparisons and text-image relevance assessments. The design-thinking map within its interface aids in managing the design process. Our user study indicates that AutoSpark effectively aids designers in producing designs that are more aligned with emotional needs and of higher quality compared to a baseline system, while also enhancing the designers’ experience in the human-AI co-creation process.

Publication
In Proceedings of the 37th Annual ACM Symposium on User Interface Software and Technology
陈柳青
陈柳青
博士生导师

主要研究方向:智能设计,智能交互,设计大数据,创意设计,AR/VR,用户体验,Web前端/UI。

景千芝
景千芝
2021级博士生
曾怡欣
曾怡欣
2022级硕士生
夏多为
夏多为
2023级硕士生