基于Kaiman滤波的中型联赛机器人足球ERSOW动态局部球跟踪

M. Bachtiar, Iwan Kurnianto Wibowo, Rangga Dikarinata, Renardi Adryantoro Priambudi, Khoirul Anwar
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引用次数: 0

摘要

机器人足球利用视觉系统连续寻找球。视觉目标检测的质量是机器人考虑的主要因素。除了质量之外,检测过程的性能也影响着机器人的性能。目标检测是整个ERSOW机器人流程中最重的环节。在本文中,我们讨论了如何优化使用Kaiman滤波的跟踪方法增强的视觉目标检测过程。Kaiman滤波器也广泛用于机器人。在物体周围设置了局部ROI,以限制检测方法运行时对整个帧的扫描。局部ROI将减少计算过程,并使处理过程保持在处理器可以处理的足够资源中。Kaiman滤波器通过考虑之前的位置和时间来预测目标的位置和方向。Kaiman滤波器将锁定对象并跟随对象,而不再使用检测特性。从所进行的试验结果来看,在几个位置的预测值显示出令人满意的结果。x轴上的平均误差为1.425像素,y轴上的平均误差为1.7226像素。该系统还可以将平均计算时间从31.67 Ms减少到20.4 Ms。该研究有望克服ERSOW的计算能力,提高机器人的性能
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Local Ball Tracking in Middle Size League Robot Soccer ERSOW based on Kaiman Filter
The Robot Soccer uses the vision system to look for the ball continuously. The quality of vision object detection is the main factor that considered by the robot. Beside the quality, the performance of the detection process also affects the robot performance. The object detection is the heaviest process in entire ERSOW’s robot process. In this paper, we addressed the ways optimizing the vision object detection process that enhanced by the tracking method using Kaiman Filter. The Kaiman filter is also widely used for robotic purposes. The object has been equipped with a local ROI around them to limit the scanning on the entire frame when detection method is running. The local ROI will reduce the computation process and keeping the process in the sufficient resources that processor can handle. The Kaiman filter will predicted the object position and the direction of the object by considered the previous position and the times was taken. The Kaiman filter will lock the object and will follow the object without using detection feature anymore. From the results of tests conducted, the predicted value in several position has showed promising result. The average error on x-axis is 1.425 pixels and in y-axis 1.7226 pixels. This system can also reduce the average computation time from 31.67 Ms into 20.4 Ms. This research is expected to overcome the overwhelmed of the ERSOW’s computation and increased the performance of the robot
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