CVHCJul 28, 2025

Self-Supervised Continuous Colormap Recovery from a 2D Scalar Field Visualization without a Legend

arXiv:2507.20632v2h-index: 3IEEE Trans Vis Comput Graph
Originality Incremental advance
AI Analysis

This addresses a specific challenge in visualization analysis for researchers and practitioners, though it appears incremental as it builds on existing methods with novel components.

The paper tackles the problem of recovering a continuous colormap from a 2D scalar field visualization without a legend by proposing a self-supervised approach that decouples and reconstructs the colormap and data, achieving quantitative and qualitative improvements on synthetic and real-world datasets.

Recovering a continuous colormap from a single 2D scalar field visualization can be quite challenging, especially in the absence of a corresponding color legend. In this paper, we propose a novel colormap recovery approach that extracts the colormap from a color-encoded 2D scalar field visualization by simultaneously predicting the colormap and underlying data using a decoupling-and-reconstruction strategy. Our approach first separates the input visualization into colormap and data using a decoupling module, then reconstructs the visualization with a differentiable color-mapping module. To guide this process, we design a reconstruction loss between the input and reconstructed visualizations, which serves both as a constraint to ensure strong correlation between colormap and data during training, and as a self-supervised optimizer for fine-tuning the predicted colormap of unseen visualizations during inferencing. To ensure smoothness and correct color ordering in the extracted colormap, we introduce a compact colormap representation using cubic B-spline curves and an associated color order loss. We evaluate our method quantitatively and qualitatively on a synthetic dataset and a collection of real-world visualizations from the VIS30K dataset. Additionally, we demonstrate its utility in two prototype applications -- colormap adjustment and colormap transfer -- and explore its generalization to visualizations with color legends and ones encoded using discrete color palettes.

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