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viz2viz: Prompt-driven stylized visualization generation using a diffusion model

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arxiv 2304.01919 v1 pith:CBR5CMYG submitted 2023-04-04 cs.HC

viz2viz: Prompt-driven stylized visualization generation using a diffusion model

classification cs.HC
keywords differentstylizedvisualizationvisualizationschartsmarksapproachrecipe
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Creating stylized visualization requires going beyond the limited, abstract, geometric marks produced by most tools. Rather, the designer builds stylized idioms where the marks are both transformed (e.g., photographs of candles instead of bars) and also synthesized into a 'scene' that pushes the boundaries of traditional visualizations. To support this, we introduce viz2viz, a system for transforming visualizations with a textual prompt to a stylized form. The system follows a high-level recipe that leverages various generative methods to produce new visualizations that retain the properties of the original dataset. While the base recipe is consistent across many visualization types, we demonstrate how it can be specifically adapted to the creation of different visualization types (bar charts, area charts, pie charts, and network visualizations). Our approach introduces techniques for using different prompts for different marks (i.e., each bar can be something completely different) while still retaining image "coherence." We conclude with an evaluation of the approach and discussion on extensions and limitations.

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Cited by 2 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. ChArtist: Generating Pictorial Charts with Unified Spatial and Subject Control

    cs.CV 2026-03 unverdicted novelty 7.0

    ChArtist generates pictorial charts via a Diffusion Transformer using skeleton-based spatial control and reference-image subject control, supported by a new 30,000-triplet dataset and data accuracy metric.

  2. Semantic-Structural Alignment for Generative Pictorial Charts

    cs.GR 2026-05 unverdicted novelty 5.0

    Dual-conditioned Multi-Modal Diffusion Transformer with structural and semantic alignment mechanisms generates pictorial charts from text prompts and abstract chart images.