Article Users Activity Gesture Recognition on Kinect Sensor Using Convolutional Neural Networks and FastDTW for Controlling Movements of a Mobile Robot

In this paper, we use data from the Microsoft Kinect sensor that processes the captured imageof a person using and extracting the joints information on every frame. Then, we propose the creation ofan image derived from all the sequential frames of a gesture the movement, which facilitates training i...

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Veröffentlicht in:Inteligencia artificial 2019-04, Vol.22 (63), p.121-134
Hauptverfasser: Pfitscher, Miguel, Welfer, Daniel, Do Nascimento, Evaristo José, Cuadros, Marco Antonio De Souza Leite, Gamarra, Daniel Fernando Tello
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Sprache:eng
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Zusammenfassung:In this paper, we use data from the Microsoft Kinect sensor that processes the captured imageof a person using and extracting the joints information on every frame. Then, we propose the creation ofan image derived from all the sequential frames of a gesture the movement, which facilitates training in aconvolutional neural network. We trained a CNN using two strategies: combined training and individualtraining. The strategies were experimented in the convolutional neural network (CNN) using theMSRC-12 dataset, obtaining an accuracy rate of 86.67% in combined training and 90.78% of accuracyrate in the individual training.. Then, the trained neural network was used to classify data obtained fromKinect with a person, obtaining an accuracy rate of 72.08% in combined training and 81.25% inindividualized training. Finally, we use the system to send commands to a mobile robot in order to controlit.
ISSN:1137-3601
1988-3064
DOI:10.4114/intartif.vol22iss63pp121-134