Human motion training data generation for radar based deep learning applications

peer-reviewed
Erstveröffentlichung
2018-05-09Authors
Ishak, Karim
Appenrodt, Nils
Dickmann, Jürgen
Waldschmidt, Christian
Beitrag zu einer Konferenz
Published in
2018 International Conference on Microwaves for Intelligent Mobility (ICMIM) / Institute of Electrical and Electronics Engineers (Hrsg.). - : IEEE, 2018. - eISSN 978-1-5386-1725-0
Faculties
Fakultät für Ingenieurwissenschaften, Informatik und PsychologieInstitutions
Institut für MikrowellentechnikExternal cooperations
Daimler AGDocument version
accepted versionConference
International Conference on Microwaves for Intelligent Mobility (ICMIM), 2018-04-16 - 2018-04-18, München
Abstract
Radar sensors are utilized for detection and classification
purposes in various applications. In order to use
deep learning techniques, lots of training data are required.
Accordingly, lots of measurements and labelling tasks are then
needed. For the purpose of pre-training or examining first ideas
before bringing them into reality, synthetic radar data are of
great help. In this paper, a workflow for automatically generating
radar data of human gestures is presented, starting with creating
the desired animations until synthesizing radar data and getting
the final required dataset. The dataset could then be used for
training deep learning models. A classification scenario applying
this workflow is also introduced.
Original publication
10.1109/ICMIM.2018.8443559Subject headings
[GND]: Deep learning[LCSH]: Machine learning
[Free subject headings]: Micro-Doppler | Radar data generation
[DDC subject group]: DDC 620 / Engineering & allied operations
Metadata
Show full item recordDOI & citation
Please use this identifier to cite or link to this item: http://dx.doi.org/10.18725/OPARU-6512
Ishak, Karim et al. (2018): Human motion training data generation for radar based deep learning applications. Open Access Repositorium der Universität Ulm und Technischen Hochschule Ulm. http://dx.doi.org/10.18725/OPARU-6512
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