Segmentation of Polar Mesospheric Summer Echoes using Fully Convolutional Network
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https://hdl.handle.net/10037/29272Dato
2023-04-26Type
Master thesisMastergradsoppgave
Forfatter
Domben, Erik SeipSammendrag
Polar Mesospheric Summer Echoes (PMSE) are strong coherent radar echoes
that occur in the 80 to 90 km altitude range of the mesosphere during the Arctic
summer months. These echoes are of significant interest to the space physics
community as they provide insight into changes that occur in the atmosphere.
To better understand these changes, large datasets of PMSE echoes need to
be analysed. In this study, we aimed to develop a deep learning model that
could segment PMSE signal data for analysis on larger EISCAT VHF datasets.
For the task, we employed a UNet and a UNet++ architecture and tested how
pretrained weights from other source domains perform. Next, different loss
functions were tested and last the novel object-level augmentation method
ObjectAug was employed with other image-level augmentation methods to
increase model performance and reduce potential overfitting due to a small
training dataset. The results indicate that using randomly initialized weights
was the better option for the PMSE target domain and that the use of different
loss functions only had a small impact on model performance. When using
image- and object-level augmentation the best performing model was reached.
It was also seen that there exist inconsistencies in the PMSE signal groundtruth
labels. Dividing the inconsistencies into two categories: Granular and
Coarse, it was seen that using object-level augmentation had a significantly
higher performance on the Granular labelled PMSE signal samples. Overall,
our study indicates that the best performing model can be used to segment
PMSE for larger datasets or as a supportive tool for further labelling of PMSE
signal data.
Forlag
UiT The Arctic University of NorwayUiT Norges arktiske universitet
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