Author:
Vogt Karsten,Paul Andreas,Ostermann Jörn,Rottensteiner Franz,Heipke Christian
Abstract
The creation of training sets for supervised machine learning often incurs unsustainable manual costs. Transfer learning (<small>TL</small>) techniques have been proposed as a way to solve this issue by adapting training data from different, but related (source) datasets
to the test (target) dataset. A problem in <small>TL</small> is how to quantify the relatedness of a source quickly and robustly. In this work, we present a fast domain similarity measure that captures the relatedness between datasets purely based on unlabeled data. Our method
transfers knowledge from multiple sources by generating a weighted combination of domains. We show for multiple datasets that learning on such sources achieves an average overall accuracy closer than 2.5 percent to the results of the target classifier for semantic segmentation tasks. We further
apply our method to the task of choosing informative patches from unlabeled datasets. Only labeling these patches enables a reduction in manual work of up to 85 percent.
Publisher
American Society for Photogrammetry and Remote Sensing
Subject
Computers in Earth Sciences
Cited by
7 articles.
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