FlowEval: Reference-Based Evaluation of Generated User Interfaces
AuthorsJason Wu†**, Priyan Vaithilingam, Eldon Schoop, Jeffrey Nichols, Titus Barik
FlowEval: Reference-Based Evaluation of Generated User Interfaces
AuthorsJason Wu†**, Priyan Vaithilingam, Eldon Schoop, Jeffrey Nichols, Titus Barik
While large language models (LLMs) and coding agents are often applied to user interface (UI) development, developers find it difficult to reliably assess their proficiency in visual and interaction design. Existing evaluations either rely on human experts, who can accurately assess usability by testing critical flows but are slow and costly, or on automated judges, which are scalable but less accurate and opaque. We present FlowEval, a reference-based framework that measures whether a generated UI supports realistic interaction flows by comparing navigation traces from real websites to traces from generated analogs using reference-based similarity metrics (e.g., dynamic time warping). In a small-scale study with expert UI evaluators, we show that reference-based metrics strongly correlate with human judgments, suggesting that they can provide scalable yet trustworthy evaluation for UI generation systems.
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Multimodal Vision-Language Models (VLMs) enable powerful applications from their fused understanding of images and language, but many perform poorly on UI tasks due to the lack of UI training data. In this paper, we adapt a recipe for generating paired text-image training data for VLMs to the UI domain by combining existing pixel-based methods with a Large Language Model (LLM). Unlike prior art, our method requires no human-provided annotations,…
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September 10, 2024research area Computer Vision, research area Human-Computer Interactionconference ECCV
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