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An efficient object recognition and self-localization system for humanoid soccer robot

机译:一种有效的人形足球机器人目标识别与自定位系统

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In the RoboCup soccer humanoid league competition, the vision system is used to collect various environment information as the terminal data to finish the functions of object recognition, coordinate establishment, robot localization, robot tactic, barrier avoiding, etc. Thus, a real-time object recognition and high accurate self-localization system of the soccer robot becomes the key technology to improve the performance. In this work we proposed an efficient object recognition and self-localization system for the RoboCup soccer humanoid league rules of the 2009 competition. We proposed two methods : 1) In the object recognition part, the real-time vision-based method is based on the adaptive resolution method (ARM). It can select the most proper resolution for different situations in the competition. ARM can reduce the noises interference and make the object recognition system more robust as well. 2) In the self-localization part, we proposed a new approach, adaptive vision-based self-localization system (AVBSLS), which uses the trigonometric function to find the coarse location of the robot and further adopts the measuring artificial neural network technique to adjust the humanoid robot position adaptively. The experimental results indicate that the proposed system is not easily affected by the light illumination. The object recognition accuracy rate is more than 93% on average and the average frame rate can reach 32 fps (frame per second). It does not only maintain the higher recognition accuracy rate for the high resolution frames, but also increase the average frame rate for about 11 fps compared to the conventional high resolution approach and the average accuracy ratio of the localization is 92.3%.
机译:在RoboCup足球人形联赛中,视觉系统用于收集各种环境信息作为终端数据,以完成对象识别,坐标建立,机器人定位,机器人战术,避障等功能。足球机器人的目标识别和高精度自定位系统成为提高性能的关键技术。在这项工作中,我们为2009年RoboCup足球人形联赛规则提出了一种有效的对象识别和自我定位系统。我们提出了两种方法:1)在对象识别部分,基于实时视觉的方法基于自适应分辨率方法(ARM)。它可以为比赛中的不同情况选择最合适的分辨率。 ARM可以减少噪声干扰,并使对象识别系统也更强大。 2)在自定位部分,我们提出了一种新的方法,即基于视觉的自适应自定位系统(AVBSLS),它利用三角函数来找到机器人的粗略位置,并进一步采用了测量人工神经网络技术来自适应地调整人形机器人的位置。实验结果表明,所提出的系统不容易受到光照的影响。物体识别的准确率平均超过93%,平均帧速率可以达到32 fps(每秒帧)。与传统的高分辨率方法相比,它不仅可以保持高分辨率帧的较高识别准确率,而且可以将平均帧速率提高约11 fps,并且本地化的平均准确率为92.3%。

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