Predicting Real Distance for Wheeled Soccer Robot using YOLO Architecture
Dublin Core
Title
Predicting Real Distance for Wheeled Soccer Robot using YOLO Architecture
Subject
Stereo Vision, YOLOv5, ROS, Robot Soccer, AutonomousNavigation
Description
This study presents a real-distance estimation system for wheeled soccer robots that integrates stereo vision cameras with a YOLO-based object detection algorithm to support accurate perception for game strategies. Experimental evaluations using 10 ball samples and 6 robot scenarios demonstrate that the proposed system achieves an average distance estimation accuracy of 96.7% with a low error margin of ±2.3% and a confidence level of 99%, indicating high reliability in object detection and metric distance measurement. The results confirm that stereo vision combined with deep learning provides precise spatial information suitable for dynamic soccer robot environments, enabling improved positioning and decision-making. While the system performs robustly under standard conditions, future work will address performance degradation caused by lighting variations, explore newer YOLO model architectures, and incorporate artificial intelligence–based adaptive strategies to further enhance autonomy and competitiveness in wheeled soccer robot applications.
Creator
Sholahuddin Muhammad Irsyad1, Agus Khumaidi2, Ryan Yudha Aditya3, Adi Rahmad Ramadhan4*, Dhika Arya Pratama5*, Muhammad Jardin Saputra6
Source
https://ijicom.respati.ac.id/index.php/ijicom/article/view/200/137
Publisher
nternational Journal of Informatics and Computation (IJICOM)
Date
2025
Contributor
Fajar bagus W
Format
PDF
Language
English
Type
Text
Files
Collection
Citation
Sholahuddin Muhammad Irsyad1, Agus Khumaidi2, Ryan Yudha Aditya3, Adi Rahmad Ramadhan4*, Dhika Arya Pratama5*, Muhammad Jardin Saputra6, “Predicting Real Distance for Wheeled Soccer Robot using YOLO Architecture,” Repository Horizon University Indonesia, accessed February 3, 2026, https://repository.horizon.ac.id/items/show/9800.