1Institute of Applied Informatics, Automation and Mathematics, Faculty of Materials Science and Technology, Slovak University of Technology, Trnava, Slovakia
2Kalashnikov Izhevsk State Technical University, Mechatronic Systems Department, Izhevsk, Russia
American Journal of Mechanical Engineering.
2014,
Vol. 2 No. 7, 216-218
DOI: 10.12691/ajme-2-7-9
Copyright © 2014 Science and Education PublishingCite this paper: Pavol Bezák, Yury Rafailovich Nikitin, Pavol Božek. Robotic Grasping System Using Convolutional Neural Networks.
American Journal of Mechanical Engineering. 2014; 2(7):216-218. doi: 10.12691/ajme-2-7-9.
Correspondence to: Pavol Božek, Kalashnikov Izhevsk State Technical University, Mechatronic Systems Department, Izhevsk, Russia. Email:
pavol.bozek@stuba.skAbstract
Object grasping by robot hands is challenging due to the hand and object modeling uncertainties, unknown contact type and object stiffness properties. To overcome these challenges, the essential purpose is to achieve the mathematical model of the robot hand, model the object and the contact between the object and the hand. In this paper, an intelligent hand-object contact model is developed for a coupled system assuming that the object properties are known. The control is simulated in the Matlab Simulink/ SimMechanics, Neural Network Toolbox and Computer Vision System Toolbox..
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