Visual Grounding Methods for Efficient Interaction with Desktop Graphical User Interfaces
May 05, 2024 Β· Declared Dead Β· + Add venue
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Authors
El Hassane Ettifouri, Jessica LΓ³pez Espejel, Laura Minkova, Tassnim Dardouri, Walid Dahhane
arXiv ID
2407.01558
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.AI
Citations
1
Last Checked
4 months ago
Abstract
Most visual grounding solutions primarily focus on realistic images. However, applications involving synthetic images, such as Graphical User Interfaces (GUIs), remain limited. This restricts the development of autonomous computer vision-powered artificial intelligence (AI) agents for automatic application interaction. Enabling AI to effectively understand and interact with GUIs is crucial to advancing automation in software testing, accessibility, and human-computer interaction. In this work, we explore Instruction Visual Grounding (IVG), a multi-modal approach to object identification within a GUI. More precisely, given a natural language instruction and a GUI screen, IVG locates the coordinates of the element on the screen where the instruction should be executed. We propose two main methods: (1) IVGocr, which combines a Large Language Model (LLM), an object detection model, and an Optical Character Recognition (OCR) module; and (2) IVGdirect, which uses a multimodal architecture for end-to-end grounding. For each method, we introduce a dedicated dataset. In addition, we propose the Central Point Validation (CPV) metric, a relaxed variant of the classical Central Proximity Score (CPS) metric. Our final test dataset is publicly released to support future research.
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