Comparison of Deep Learning Models for the Classification of Noctilucent Cloud Images
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https://hdl.handle.net/10037/27344Dato
2022-05-10Type
Journal articleTidsskriftartikkel
Peer reviewed
Sammendrag
Optically thin layers of tiny ice particles near the summer mesopause, known as noctilucent
clouds, are of significant interest within the aeronomy and climate science communities. Groundbased optical cameras mounted at various locations in the arctic regions collect the dataset during
favorable summer times. In this paper, first, we compare the performances of various deep learningbased image classifiers against a baseline machine learning model trained with support vector
machine (SVM) algorithm to identify an effective and lightweight model for the classification of
noctilucent clouds. The SVM classifier is trained with histogram of oriented gradient (HOG) features,
and deep learning models such as SqueezeNet, ShuffleNet, MobileNet, and Resnet are fine-tuned
based on the dataset. The dataset includes images observed from different locations in northern
Europe with varied weather conditions. Second, we investigate the most informative pixels for
the classification decision on test images. The pixel-level attributions calculated using the guide
back-propagation algorithm are visualized as saliency maps. Our results indicate that the SqueezeNet
model achieves an F1 score of 0.95. In addition, SqueezeNet is the lightest model used in our
experiments, and the saliency maps obtained for a set of test images correspond better with relevant
regions associated with noctilucent clouds.
Forlag
MDPISitering
Sapkota, Sharma, Mann. Comparison of Deep Learning Models for the Classification of Noctilucent Cloud Images. Remote Sensing. 2022;14(10)Metadata
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