From Top-Right to User-Right: Perceptual Prioritization of Point-Feature Label Positions
Petr Bob\'ak, Ladislav \v{C}mol\'ik, Martin \v{C}ad\'ik

TL;DR
This study introduces a user-validated label placement order in cartography that favors labels above features, challenging traditional conventions and enhancing readability based on extensive international user testing.
Contribution
The paper presents the Perceptual Position Priority Order (PerceptPPO), a novel, user-validated label placement strategy that significantly improves readability and user preference over traditional methods.
Findings
Labels above point features are significantly preferred by users.
PerceptPPO outperforms traditional PPOs in perceived quality.
Extensive user study with 800 participants supports the new placement order.
Abstract
In cartography, Geographic Information Systems (GIS), and visualization, the position of a label relative to its point feature is crucial for readability and user experience. Alongside other factors, the point-feature label placement (PFLP) is typically governed by the Position Priority Order (PPO), a systematic raking of potential label positions around a point feature according to predetermined priorities. While there is a broad consensus on factors such as avoiding label conflicts and ensuring clear label-to-feature associations, there is no agreement on PPO. Most PFLP techniques rely on traditional PPOs grounded in typographic and cartographic conventions established decades ago, which may no longer meet today's user expectations. In contrast, commercial products like Google Maps and Mapbox use non-traditional PPOs for unreported reasons. Our extensive user study introduces the…
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Taxonomy
TopicsIndustrial Vision Systems and Defect Detection
