Browsing Fakultät für Bauingenieurwesen und Geodäsie by Subject "domain adaptation"

Browsing Fakultät für Bauingenieurwesen und Geodäsie by Subject "domain adaptation"

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  • Wickramarachchi, Chandula T.; Gardner, Paul; Poole, Jack; Hübler, Clemens; Jonscher, Clemens; Rolfes, Raimund (Cambridge : Cambridge University Press, 2024)
    A significant challenge of structural health monitoring (SHM) is the lack of labeled data collected from damage states. Consequently, the collected data can be incomplete, making it difficult to undertake machine learning ...
  • Wittich, Dennis (Katlenburg-Lindau : Copernicus Publications, 2020)
    Fully convolutional neural networks (FCN) are successfully used for the automated pixel-wise classification of aerial images and possibly additional data. However, they require many labelled training samples to perform ...
  • Soto, P.J.; Costa, G.A.O.P.; Feitosa, R.Q.; Happ, P.N.; Ortega, M.X.; Noa, J.; Almeida, C.A.; Heipke, Christian (Katlenburg-Lindau : Copernicus Publications, 2020)
    Deep learning classification models require large amounts of labeled training data to perform properly, but the production of reference data for most Earth observation applications is a labor intensive, costly process. In ...
  • Paul, Andreas; Rottensteiner, Franz; Heipke, Christian (Göttingen : Copernicus GmbH, 2016)
    Domain adaptation techniques in transfer learning try to reduce the amount of training data required for classification by adapting a classifier trained on samples from a source domain to a new data set (target domain) ...

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