PaCoNet: Deep Data Extraction for Parallel Coordinates
International Conference on Pattern Recognition 2026
Abstract
Extracting data from visualizations has long challenged com- puter vision, with current research focused on bar, line, and pie charts, among other low-dimensional visualizations. However, parallel coordinates as a widely used high-dimensional data visualization approach, remain largely unexplored in this context. As parallel coordinate plots can quickly become cluttered and difficult to interpret when poorly designed or densely populated, automated data extraction from such visualizations is of par- ticular interest. In this paper, we propose PaCoNet, the first approach for parallel coordinate data extraction. PaCoNet not only extracts line coordinates, but also enables the extraction of individual data samples for further analysis. Towards this end, we make the following contributions. We present the first deep learning approach tailored for parallel coordinate analysis, and demonstrate that it outperforms unadapted baselines by a significant margin. We further introduce a large-scale parallel coordinate dataset for training and testing. Together, these key contributions enable for the first time the automated analysis and redesign of parallel coordi- nate plots. PaCoNet thus lays the groundwork for complex visualization analysis, and further advances the intersection of computer vision and data visualization.
BibTeX
@inproceedings{poonam2026paconet,
title={PaCoNet: Deep Data Extraction for Parallel Coordinates},
author={Poonam, Poonam and Kniesel, Hannah and V{\'a}zquez, Pere-Pau and Ropinski, Timo},
booktitle={Proceedings of International Conference on Pattern Recognition}
year={2026}
}