IEEE VIS 2024 Content: Uncertainty-Informed Volume Visualization using Implicit Neural Representation

Uncertainty-Informed Volume Visualization using Implicit Neural Representation

Shanu Saklani - IIT kanpur , Kanpur , India

Chitwan Goel - Indian Institute of Technology Kanpur, Kanpur, India

Shrey Bansal - Indian Institute of Technology Kanpur, Kanpur, India

Zhe Wang - Oak Ridge National Laboratory, Oak Ridge, United States

Soumya Dutta - Indian Institute of Technology Kanpur (IIT Kanpur), Kanpur, India

Tushar M. Athawale - Oak Ridge National Laboratory, Oak Ridge, United States

David Pugmire - Oak Ridge National Laboratory, Oak Ridge, United States

Chris R. Johnson - University of Utah, Salt Lake City, United States

Room: Bayshore VI

2024-10-14T12:30:00ZGMT-0600Change your timezone on the schedule page
2024-10-14T12:30:00Z
Exemplar figure, described by caption below
Showcasing how uncertainty-aware deep learning models produce informative and reliable volume rendering results. Furthermore, the results demonstrate how prediction uncertainty in volume rendering can be quantified and communicated to domain scientists, aiding in the interpretation of deep learning model-generated outcomes.
Abstract

The increasing adoption of Deep Neural Networks (DNNs) has led to their application in many challenging scientific visualization tasks. While advanced DNNs offer impressive generalization capabilities, understanding factors such as model prediction quality, robustness, and uncertainty is crucial. These insights can enable domain scientists to make informed decisions about their data. However, DNNs inherently lack ability to estimate prediction uncertainty, necessitating new research to construct robust uncertainty-aware visualization techniques tailored for various visualization tasks. In this work, we propose uncertainty-aware implicit neural representations to model scalar field data sets effectively and comprehensively study the efficacy and benefits of estimated uncertainty information for volume visualization tasks. We evaluate the effectiveness of two principled deep uncertainty estimation techniques: (1) Deep Ensemble and (2) Monte Carlo Dropout (MCDropout). These techniques enable uncertainty-informed volume visualization in scalar field data sets. Our extensive exploration across multiple data sets demonstrates that uncertainty-aware models produce informative volume visualization results. Moreover, integrating prediction uncertainty enhances the trustworthiness of our DNN model, making it suitable for robustly analyzing and visualizing real-world scientific volumetric data sets.