Classification of trajectories—Extracting invariants with a neural network
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This work is partly based on a diploma thesis at the Technische Universität München and was originally conducted at Kratzer Automatisierung GmbH, Carl-von-Linde-Str. 38, 8044 Unterschleiβheim. It has further been funded by the German Ministry for Research and Technology (BMFT) under FKZ ITN9102B. The authors are solely responsible for the contents of this publication. They would like to thank Dr. H. Geiger and his team at Kratzer Automatisierung GmbH for many fruitful discussions as well as for providing neural network tools.
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