Classification and understanding of cloud structures via satellite
images with EfficientUNet
- URL: http://arxiv.org/abs/2009.12931v4
- Date: Fri, 9 Jul 2021 22:21:19 GMT
- Title: Classification and understanding of cloud structures via satellite
images with EfficientUNet
- Authors: Tashin Ahmed and Noor Hossain Nuri Sabab
- Abstract summary: classification of cloud organization patterns was performed using a new scaled-up version of Convolutional Neural Network (CNN)
Dice coefficient has been used for the final evaluation metric, which gave the score of 66.26% and 66.02% for public and private (test set) leaderboard on Kaggle competition respectively.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Climate change has been a common interest and the forefront of crucial
political discussion and decision-making for many years. Shallow clouds play a
significant role in understanding the Earth's climate, but they are challenging
to interpret and represent in a climate model. By classifying these cloud
structures, there is a better possibility of understanding the physical
structures of the clouds, which would improve the climate model generation,
resulting in a better prediction of climate change or forecasting weather
update. Clouds organise in many forms, which makes it challenging to build
traditional rule-based algorithms to separate cloud features. In this paper,
classification of cloud organization patterns was performed using a new
scaled-up version of Convolutional Neural Network (CNN) named as EfficientNet
as the encoder and UNet as decoder where they worked as feature extractor and
reconstructor of fine grained feature map and was used as a classifier, which
will help experts to understand how clouds will shape the future climate. By
using a segmentation model in a classification task, it was shown that with a
good encoder alongside UNet, it is possible to obtain good performance from
this dataset. Dice coefficient has been used for the final evaluation metric,
which gave the score of 66.26\% and 66.02\% for public and private (test set)
leaderboard on Kaggle competition respectively.
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