RT Conference Proceedings T1 Computer vision with Microsoft Kinect for control of functional electrical stimulation: ANN classification of the grasping intentions A1 Štrbac, Matija D. A1 Popović, Dejan B. A2 Reljin, Branimir A2 Stankovic, Srdan AB We present a method for recognizing intended grasp type based on data from the Microsoft Kinect. A computer vision algorithm estimates the vertical and the transversal distance of the hand from the center of the object and the hand orientation from the Kinect depth images. Based on this set of features in the reaching phase of grasp artificial neural network recognizes the intended grasp type. This is demonstrated with an example of a coffee cup on a working desk. Trained neural network classified the grasp with accuracy above 85%. By adding this feature to the existing computer vision system for control of the functional electrical stimulation assisted grasping we facilitate the compliance between the applied electrical stimulation and the user intentions. PB Institute of Electrical and Electronics Engineers Inc. SN 9781479958887 YR 2014 FD 2014-01-15 LK https://hdl.handle.net/11556/2837 UL https://hdl.handle.net/11556/2837 LA eng NO Štrbac , M D & Popović , D B 2014 , Computer vision with Microsoft Kinect for control of functional electrical stimulation : ANN classification of the grasping intentions . in B Reljin & S Stankovic (eds) , 12th Symposium on Neural Network Applications in Electrical Engineering, NEUREL 2014 - Proceedings . , 7011491 , 12th Symposium on Neural Network Applications in Electrical Engineering, NEUREL 2014 - Proceedings , Institute of Electrical and Electronics Engineers Inc. , pp. 153-156 , 12th Symposium on Neural Network Applications in Electrical Engineering, NEUREL 2014 , Belgrade , Serbia , 25/11/14 . https://doi.org/10.1109/NEUREL.2014.7011491 NO conference NO Publisher Copyright: © 2014 IEEE. DS TECNALIA Publications RD 28 jul 2024