Sub-Pixel Optical Satellite Image Registration For Ground Deformation Using Deep Learning
Tristan Montagnon, James Hollingsworth, Erwan Pathier, Mathilde Marchandon, Mauro Dalla Mura, Sophie Giffard-Roisin
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The problem of analysing videos of beating embryonic salmon hearts is addressed here with the aim of classifying infected and healthy embryonic salmon hearts. Determination of infection in a very early stage with simple means can reduce the cost of Salmon farming greatly and can boost the economy of countries dependent on Atlantic salmon fish farming. We converted data-dense videos into physically relevant single variable time-signal, namely area of heart as a function of time. This helped us derive simple physical attributes like spectrograms to describe the heart function in a more informative way. We used these spectrogram images with ensemble of deep learning algorithms to show successful classification of infected and healthy salmon hearts, with an average accuracy of 82%. We are unaware of such studies where simple but powerful physically relevant features are used for achieving this accuracy for videos with unconventional dynamics, such as beating heart.