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Robots from Nowhere

机译:无处可寻的机器人

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摘要

In this study, a new method called Reverse Monte Carlo Localization (R-MCL) for global localization of autonomous mobile agents in the robotic soccer domain is proposed to overcome the uncertainty in the sensors, environment and the motion model. This is a hybrid method based on both Markov Localiza-tion(ML) and Monte Carlo Localization(MCL) where the ML module finds the region where the robot should be and MCL predicts the geometrical location with high precision by selecting samples in this region. The method is very robust and fast and requires less computational power and memory compared to similar approaches and is accurate enough for high level decision making which is vital for robot soccer.
机译:在这项研究中,提出了一种称为反向蒙特卡洛定位(R-MCL)的新方法,用于在机器人足球领域中对自主移动代理进行全局定位,以克服传感器,环境和运动模型中的不确定性。这是一种基于马尔可夫定位(ML)和蒙特卡洛定位(MCL)的混合方法,其中ML模块找到机器人应位于的区域,并且MCL通过选择该区域中的样本来高精度地预测几何位置。与类似的方法相比,该方法非常健壮和快速,并且需要较少的计算能力和内存,并且对于进行高级决策(对于机器人足球至关重要)的准确性足够高。

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