English

RelMap: Reliable Spatiotemporal Sensor Data Visualization via Imputative Spatial Interpolation

Machine Learning 2025-08-05 v1 Human-Computer Interaction

Abstract

Accurate and reliable visualization of spatiotemporal sensor data such as environmental parameters and meteorological conditions is crucial for informed decision-making. Traditional spatial interpolation methods, however, often fall short of producing reliable interpolation results due to the limited and irregular sensor coverage. This paper introduces a novel spatial interpolation pipeline that achieves reliable interpolation results and produces a novel heatmap representation with uncertainty information encoded. We leverage imputation reference data from Graph Neural Networks (GNNs) to enhance visualization reliability and temporal resolution. By integrating Principal Neighborhood Aggregation (PNA) and Geographical Positional Encoding (GPE), our model effectively learns the spatiotemporal dependencies. Furthermore, we propose an extrinsic, static visualization technique for interpolation-based heatmaps that effectively communicates the uncertainties arising from various sources in the interpolated map. Through a set of use cases, extensive evaluations on real-world datasets, and user studies, we demonstrate our model's superior performance for data imputation, the improvements to the interpolant with reference data, and the effectiveness of our visualization design in communicating uncertainties.

Keywords

Cite

@article{arxiv.2508.01240,
  title  = {RelMap: Reliable Spatiotemporal Sensor Data Visualization via Imputative Spatial Interpolation},
  author = {Juntong Chen and Huayuan Ye and He Zhu and Siwei Fu and Changbo Wang and Chenhui Li},
  journal= {arXiv preprint arXiv:2508.01240},
  year   = {2025}
}

Comments

9 pages, 14 figures, paper accepted to IEEE VIS 2025

R2 v1 2026-07-01T04:30:43.977Z