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Towards Better Semantic Understanding of Mobile Interfaces

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arxiv 2210.02663 v1 pith:CWZ6WJ2S submitted 2022-10-06 cs.HC cs.CLcs.CVcs.LG

Towards Better Semantic Understanding of Mobile Interfaces

classification cs.HC cs.CLcs.CVcs.LG
keywords datasetelementsmobilemodelsannotationsbettericonsinputs
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Improving the accessibility and automation capabilities of mobile devices can have a significant positive impact on the daily lives of countless users. To stimulate research in this direction, we release a human-annotated dataset with approximately 500k unique annotations aimed at increasing the understanding of the functionality of UI elements. This dataset augments images and view hierarchies from RICO, a large dataset of mobile UIs, with annotations for icons based on their shapes and semantics, and associations between different elements and their corresponding text labels, resulting in a significant increase in the number of UI elements and the categories assigned to them. We also release models using image-only and multimodal inputs; we experiment with various architectures and study the benefits of using multimodal inputs on the new dataset. Our models demonstrate strong performance on an evaluation set of unseen apps, indicating their generalizability to newer screens. These models, combined with the new dataset, can enable innovative functionalities like referring to UI elements by their labels, improved coverage and better semantics for icons etc., which would go a long way in making UIs more usable for everyone.

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