Classification of Cloud Particle Habits Using Transfer Learning with a Deep Convolutional Neural Network
Zapisane w:
| Wydane w: | Atmosphere vol. 16, no. 3 (2025), p. 294 |
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| 1. autor: | |
| Kolejni autorzy: | , , |
| Wydane: |
MDPI AG
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| Hasła przedmiotowe: | |
| Dostęp online: | Citation/Abstract Full Text + Graphics Full Text - PDF |
| Etykiety: |
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| Streszczenie: | The habits of cloud particles are a significant factor impacting microphysical processes in clouds. The accurate identification of cloud particle shapes within clouds is a fundamental requirement for calculating various cloud microphysical parameters. In this study, we established a cloud particle image dataset encompassing nine distinct habit categories, totaling 8100 images. These images were captured using three probes with varying resolutions: the Cloud Particle Imager (CPI), the Two-Dimensional Stereo Probe (2D-S), and the High-Volume Precipitation Spectrometer (HVPS). Furthermore, this study performs a comparative analysis of ten different transfer learning (TL) models based on this dataset. It was found that the VGG-16 model exhibits the highest classification accuracy, reaching 97.90%. This model also demonstrates the highest recall, precision, and F1 measure. The results indicate that the VGG-16 model can reliably classify the shapes of ice crystal particles measured by both line scan imagers (2D-S, HVPS) and an area scan imager (CPI). |
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| ISSN: | 2073-4433 |
| DOI: | 10.3390/atmos16030294 |
| Źródło: | Publicly Available Content Database |