English

What Makes a Visualization Image Complex?

Human-Computer Interaction 2025-11-20 v3

Abstract

We investigate the perceived visual complexity (VC) in data visualizations using objective image-based metrics. We collected VC scores through a large-scale crowdsourcing experiment involving 349 participants and 1,800 visualization images. We then examined how these scores align with 12 image-based metrics spanning information-theoretic, clutter, color, and our two object-based metrics. Our results show that both low-level image properties and the high-level elements affect perceived VC in visualization images; The number of corners and distinct colors are robust metrics across visualizations. Second, feature congestion, an information-theoretic metric capturing statistical patterns in color and texture, is the strongest predictor of perceived complexity in visualizations rich in the same stimuli; edge density effectively explains VC in node-link diagrams. Additionally, we observe a bell-curve effect for text annotations: increasing text-to-ink ratio (TiR) initially reduces complexity, reaching an optimal point, beyond which further text increases perceived complexity. Our quantification pipeline is also interpretable, enabling metric-based explanations, grounded in the VisComplexity2K dataset, bridging computational metrics with human perceptual responses. osf.io/5xe8a has the preregistration and osf.io/bdet6 has the VisComplexity2K dataset, source code, and all Apdx. and figures.

Keywords

Cite

@article{arxiv.2510.08332,
  title  = {What Makes a Visualization Image Complex?},
  author = {Mengdi Chu and Zefeng Qiu and Meng Ling and Shuning Jiang and Robert S. Laramee and Michael Sedlmair and Jian Chen},
  journal= {arXiv preprint arXiv:2510.08332},
  year   = {2025}
}

Comments

9+20 pages, 9+18 figures. Accepted at IEEE VIS 2025

R2 v1 2026-07-01T06:27:02.901Z