TL;DR
ChArtist is a diffusion-based model that automatically generates pictorial charts with spatial and subject control, balancing data accuracy and visual aesthetics.
Contribution
It introduces a domain-specific diffusion model with a skeleton-based spatial control and subject-driven control, supported by a large dataset and a new accuracy metric.
Findings
Effective control over chart structure and visual style
High data faithfulness in generated charts
Large-scale dataset enables model fine-tuning
Abstract
A pictorial chart is an effective medium for visual storytelling, seamlessly integrating visual elements with data charts. However, creating such images is challenging because the flexibility of visual elements often conflicts with the rigidity of chart structures. This process thus requires a creative deformation that maintains both data faithfulness and visual aesthetics. Current methods that extract dense structural cues from natural images (e.g., edge or depth maps) are ill-suited as conditioning signals for pictorial chart generation. We present ChArtist, a domain-specific diffusion model for generating pictorial charts automatically, offering two distinct types of control: 1) spatial control that aligns well with the chart structure, and 2) subject-driven control that respects the visual characteristics of a reference image. To achieve this, we introduce a skeleton-based spatial…
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