Erna Alfi Nurrohmah, Bima Sena Bayu, M. Bachtiar, Iwan Kurnianto Wibowo, Renardi Adryantoro
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引用次数: 10
摘要
ERSOW (EEPIS Robot Soccer on轮式机器人足球)是由Politeknik Elektronika Negeri Surabaya开发的机器人足球,遵循国际机器人比赛RoboCup的规则,在中型联赛中设计和实施。其中最著名的一个部门是足球机器人,它分为两个部门:(1)SSL(小型联赛)和(2)MSL(中型联赛)。人工智能、计算机视觉、嵌入式系统、机械系统、硬件等与足球机器人相关的研究领域是机器人ERSOW必须发展的领域。本文主要针对机器人ERSOW的计算机视觉研究,特别是对中型足球场的特征检测,可以检测出场地的特定特征,如x结、t结、l结,从而帮助机器人完成定位任务,并将结果表示成现实世界坐标中的x和y。通过了解特征的位置,可以计算出机器人的位置。机器人ERSOW的定位系统采用里程法,数据误差较大。因此,我们尝试提取x结的特征,找到它的x和y坐标,然后得到的坐标可以作为人工智能校正里程计数据的参考。
Detecting Features of Middle Size Soccer Field using Omnidirectional Camera for Robot Soccer ERSOW
ERSOW (EEPIS Robot Soccer on Wheeled) is robot soccer developed by Politeknik Elektronika Negeri Surabaya that is designed and implemented on a Middle Size League division by following the rules of RoboCup, an international robot competition. One of the most famous division is a soccer robot, that is divided into two divisions: (1) SSL (Small Size League) and (2) MSL (Middle Size League). There are many research fields related to soccer robot which must be developed in robot ERSOW such as Artificial Intelligence (AI), Computer Vision, Embedded System, Mechanic Systems, and Hardware. This paper focuses on computer vision research for robot ERSOW, especially detecting features of the middle size soccer field, so that specific features of the field like X-junction, T-junction and L-junction can be detected to help robot positioning task where the result is represented into x and y in real-world coordinate. By knowing the position of the features, the robot position can be calculated. The localization system at robot ERSOW uses odometry, which has a large percentage of data errors. Therefore, we attempt to extract the feature of X-junction that is done to find its x and y coordinates and then the obtained coordinate can be used as a reference for correcting odometry data by AI.