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RIS citation export for MOPHA011: Improving Gesture Recognition with Machine Learning: A Comparison of Traditional Machine Learning and Deep Learning

TY  - CONF
AU  - Bacher, R.
ED  - White, Karen S.
ED  - Brown, Kevin A.
ED  - Dyer, Philip S.
ED  - Schaa, Volker RW
TI  - Improving Gesture Recognition with Machine Learning: A Comparison of Traditional Machine Learning and Deep Learning
J2  - Proc. of ICALEPCS2019, New York, NY, USA, 05-11 October 2019
CY  - New York, NY, USA
T2  - International Conference on Accelerator and Large Experimental Physics Control Systems
T3  - 17
LA  - english
AB  - Meaningful gesturing is important for an intuitive human-machine communication. This paper deals with methods suitable for identifying different finger, hand and head movements using supervised machine learning algorithms. On the one hand it discusses an implementation based on the k-nearest neighbor classification algorithm (traditional machine learning approach). On the other hand it demonstrates the classification potential of a convolutional neural network (deep learning approach). Both methods are capable of distinguishing between fast and slow, short and long, up and down, or right and left linear as well as clockwise and counterclockwise circular movements. The details of the different methods with respect to recognition accuracy and performance will be presented.
PB  - JACoW Publishing
CP  - Geneva, Switzerland
SP  - 214
EP  - 218
KW  - network
KW  - GUI
KW  - real-time
KW  - interface
KW  - controls
DA  - 2020/08
PY  - 2020
SN  - 2226-0358
SN  - 978-3-95450-209-7
DO  - doi:10.18429/JACoW-ICALEPCS2019-MOPHA011
UR  - https://jacow.org/icalepcs2019/papers/mopha011.pdf
ER  -