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Magic Layouts: Structural Prior for Component Detection in User Interface Designs

2021-06-14 17:20:36
Dipu Manandhar, Hailin Jin, John Collomosse

Abstract

We present Magic Layouts; a method for parsing screenshots or hand-drawn sketches of user interface (UI) layouts. Our core contribution is to extend existing detectors to exploit a learned structural prior for UI designs, enabling robust detection of UI components; buttons, text boxes and similar. Specifically we learn a prior over mobile UI layouts, encoding common spatial co-occurrence relationships between different UI components. Conditioning region proposals using this prior leads to performance gains on UI layout parsing for both hand-drawn UIs and app screenshots, which we demonstrate within the context an interactive application for rapidly acquiring digital prototypes of user experience (UX) designs.

Abstract (translated)

URL

https://arxiv.org/abs/2106.07615

PDF

https://arxiv.org/pdf/2106.07615.pdf


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