TY - JOUR
T1 - HyperFLINT
T2 - Hypernetwork-based Flow Estimation and Temporal Interpolation for Scientific Ensemble Visualization
AU - Gadirov, Hamid
AU - Wu, Qi
AU - Bauer, David
AU - Ma, Kwan Liu
AU - Roerdink, Jos B.T.M.
AU - Frey, Steffen
N1 - Publisher Copyright:
© 2025 The Author(s). Computer Graphics Forum published by Eurographics - The European Association for Computer Graphics and John Wiley & Sons Ltd.
PY - 2025/5/23
Y1 - 2025/5/23
N2 - We present HyperFLINT (Hypernetwork-based FLow estimation and temporal INTerpolation), a novel deep learning-based approach for estimating flow fields, temporally interpolating scalar fields, and facilitating parameter space exploration in spatio-temporal scientific ensemble data. This work addresses the critical need to explicitly incorporate ensemble parameters into the learning process, as traditional methods often neglect these, limiting their ability to adapt to diverse simulation settings and provide meaningful insights into the data dynamics. HyperFLINT introduces a hypernetwork to account for simulation parameters, enabling it to generate accurate interpolations and flow fields for each timestep by dynamically adapting to varying conditions, thereby outperforming existing parameter-agnostic approaches. The architecture features modular neural blocks with convolutional and deconvolutional layers, supported by a hypernetwork that generates weights for the main network, allowing the model to better capture intricate simulation dynamics. A series of experiments demonstrates HyperFLINT's significantly improved performance in flow field estimation and temporal interpolation, as well as its potential in enabling parameter space exploration, offering valuable insights into complex scientific ensembles.
AB - We present HyperFLINT (Hypernetwork-based FLow estimation and temporal INTerpolation), a novel deep learning-based approach for estimating flow fields, temporally interpolating scalar fields, and facilitating parameter space exploration in spatio-temporal scientific ensemble data. This work addresses the critical need to explicitly incorporate ensemble parameters into the learning process, as traditional methods often neglect these, limiting their ability to adapt to diverse simulation settings and provide meaningful insights into the data dynamics. HyperFLINT introduces a hypernetwork to account for simulation parameters, enabling it to generate accurate interpolations and flow fields for each timestep by dynamically adapting to varying conditions, thereby outperforming existing parameter-agnostic approaches. The architecture features modular neural blocks with convolutional and deconvolutional layers, supported by a hypernetwork that generates weights for the main network, allowing the model to better capture intricate simulation dynamics. A series of experiments demonstrates HyperFLINT's significantly improved performance in flow field estimation and temporal interpolation, as well as its potential in enabling parameter space exploration, offering valuable insights into complex scientific ensembles.
KW - CCS Concepts
KW - Deep Learning
KW - Ensemble Parameter Space Exploration
KW - Interpolation
KW - Scientific visualization
KW - • Computing methodologies → Flow Estimation
KW - • Human-centered computing → Spatiotemporal Data
UR - http://www.scopus.com/inward/record.url?scp=105005781917&partnerID=8YFLogxK
U2 - 10.1111/cgf.70134
DO - 10.1111/cgf.70134
M3 - Article
AN - SCOPUS:105005781917
SN - 0167-7055
JO - Computer Graphics Forum
JF - Computer Graphics Forum
ER -