Berenjkoub M, Chen G, Günther T (2020)
Publication Language: English
Publication Type: Conference contribution, Conference Contribution
Publication year: 2020
Event location: Salt Lake City
DOI: 10.1109/VIS47514.2020.00059
Feature extraction is an integral component of scientific visualization, and specifically in situations in which features are difficult to formalize, deep learning has great potential to aid in data analysis. In this paper, we develop a deep neural network that is capable of finding vortex boundaries. For training data generation, we employ a parametric flow model that generates thousands of vector field patches with known ground truth. Compared to previous methods, our approach does not require the manual setting of a threshold in order to generate the training data or to extract the vortices. After supervised learning, we apply the method to numerical fluid flow simulations, demonstrating its applicability in practice. Our results show that the vortices extracted using the proposed method can capture more accurate behavior of the vortices in the flow.
APA:
Berenjkoub, M., Chen, G., & Günther, T. (2020). Vortex Boundary Identification using Convolutional Neural Network. In Proceedings of the IEEE Visualization - Short Papers. Salt Lake City, US.
MLA:
Berenjkoub, Marzieh, Guoning Chen, and Tobias Günther. "Vortex Boundary Identification using Convolutional Neural Network." Proceedings of the IEEE Visualization - Short Papers, Salt Lake City 2020.
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