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Object detection and localization system based on neural networks for Robo-Pong

Reza Sabzevari, Alireza Mohammad Shahri, A. Fasih, Saeid Masoumzadeh, Mahdi Rezaei

Year
2008
Citations
14

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 robotpsilas 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.

Keywords

Computer scienceObject detectionArtificial intelligenceComputer visionObject (grammar)RobotArtificial neural networkMachine visionCognitive neuroscience of visual object recognitionPattern recognition (psychology)

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