UIClip: A Data-driven Model for Assessing User Interface Design

要旨

User interface (UI) design is a difficult yet important task for ensuring the usability, accessibility, and aesthetic qualities of applications. In our paper, we develop a machine-learned model, UIClip, for assessing the design quality and visual relevance of a UI given its screenshot and natural language description. To train UIClip, we used a combination of automated crawling, synthetic augmentation, and human ratings to construct a large-scale dataset of UIs, collated by description and ranked by design quality. Through training on the dataset, UIClip implicitly learns properties of good and bad designs by (i) assigning a numerical score that represents a UI design's relevance and quality and (ii) providing design suggestions. In an evaluation that compared the outputs of UIClip and other baselines to UIs rated by 12 human designers, we found that UIClip achieved the highest agreement with ground-truth rankings. Finally, we present three example applications that demonstrate how UIClip can facilitate downstream applications that rely on instantaneous assessment of UI design quality: (i) UI code generation, (ii) UI design tips generation, and (iii) quality-aware UI example search.

著者
Jason Wu
Carnegie Mellon University, Pittsburgh, Pennsylvania, United States
Yi-Hao Peng
Carnegie Mellon University, Pittsburgh, Pennsylvania, United States
Xin Yue Amanda. Li
Carnegie Mellon University, Pittsburgh, Pennsylvania, United States
Amanda Swearngin
Apple, Seattle, Washington, United States
Jeffrey P. Bigham
Apple, Pittsburgh, Pennsylvania, United States
Jeffrey Nichols
Apple Inc, San Diego, California, United States
論文URL

https://doi.org/10.1145/3654777.3676408

動画

会議: UIST 2024

ACM Symposium on User Interface Software and Technology

セッション: 3. Machine Learning for User Interfaces

Westin: Allegheny 3
5 件の発表
2024-10-15 18:00:00
2024-10-15 19:15:00