Impact Ice Microstructure Segmentation Using Transfer Learned Model 2023-01-1410
A process of using machine learning to segment impact ice microstructure is presented and analyzed. The microstructure of impact ice has been shown to correlate with the adhesion strength of ice. Machine vision techniques are explored as a method of decreasing analysis time. The segmentation was conducted with the goal of obtaining average grain size estimations. The model was trained on a set of micrographs of impact ice grown at NASA Glenn’s Icing Research Tunnel. The model leveraged a model pre-trained on a large set of micrographs of various materials as a starting point. Post-processing of the segmented images was done to connect broken boundaries. An automatic method of determining grain size following an ASTM standard was implemented. Segmentation results using different training sets as well as different encoder and decoder pairs are presented. Calculated sizes are compared to manual grain size measurement methods. Results show promise in accuracy as well as a possible improvement in repeatability and consistency. Next steps for improving the model are suggested.
Citation: Chen, R., Stuckner, J., and Giuffre, C., "Impact Ice Microstructure Segmentation Using Transfer Learned Model," SAE Technical Paper 2023-01-1410, 2023, https://doi.org/10.4271/2023-01-1410. Download Citation
Author(s):
Ru-Ching Chen, Joshua Stuckner, Christopher Giuffre
Affiliated:
NASA Glenn Research Center, Hx5, LLC
Pages: 15
Event:
International Conference on Icing of Aircraft, Engines, and Structures
ISSN:
0148-7191
e-ISSN:
2688-3627
Related Topics:
Machine learning
Imaging and visualization
Artificial intelligence (AI)
Icing and ice detection
Inspections
Education and training
Nanotechnology
Research and development
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