Reza Sabzevari, A. Shahri, A. Fasih, S. Masoumzadeh, Mahdi Rezaei
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引用次数: 11
Abstract
This paper presents a vision system for a Ping-Pong player robot, called Robo-Pong. The robot employs color object detection techniques based on neural networks in its vision system. In this approach a quite simple architecture is employed to detect and localize objects in robot’s work space. The architecture is designed to be very easy-implement and also surprisingly fast to work on such a real-time system. Also a mapping system is attached to the object detection one, in order to estimate object locations. To increase the real-time in-field train capabilities of the system some early stopping methods were exploited to deal with such vast train data.