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An AI-based Object Detection Approach for Robotic Competitions

Leonardo Pilarski, Luiz E. Luiz, João Braun, Alberto Yoshihiro Nakano, Vítor H. Pinto, Paulo Costa, José Lima

Year
2023
Citations
3

Abstract

Artificial Intelligence has been introduced in many applications, namely in artificial vision-based systems with object detection tasks. This paper presents an object localization system with a motivation to use it in autonomous mobile robots at robotics competitions. The system aims to allow robots to accomplish their tasks more efficiently. Object detection is performed using a camera and artificial intelligence based on the YOLOv4 Tiny detection model. An algorithm was developed that uses the data from the system to estimate the parameters of location, distance, and orientation based on the pinhole camera model and trigonometric modelling. It can be used in smart identification procedures of objects. Practical tests and results are presented, constantly locating the objects and with errors between 0.16 and 3.8 cm, concluding that the object localization system is adequate for autonomous mobile robots.

Keywords

Artificial intelligenceComputer scienceComputer visionMobile robotObject detectionObject (grammar)RobotRoboticsOrientation (vector space)Identification (biology)

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