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Kullback-Leibler Divergence-Based Differential Evolution Markov Chain Filter for Global Localization of Mobile Robots

机译:基于Kullback-Leibler发散度的差分进化Markov链滤波器用于移动机器人的全局定位

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摘要

One of the most important skills desired for a mobile robot is the ability to obtain its own location even in challenging environments. The information provided by the sensing system is used here to solve the global localization problem. In our previous work, we designed different algorithms founded on evolutionary strategies in order to solve the aforementioned task. The latest developments are presented in this paper. The engine of the localization module is a combination of the Markov chain Monte Carlo sampling technique and the Differential Evolution method, which results in a particle filter based on the minimization of a fitness function. The robot’s pose is estimated from a set of possible locations weighted by a cost value. The measurements of the perceptive sensors are used together with the predicted ones in a known map to define a cost function to optimize. Although most localization methods rely on quadratic fitness functions, the sensed information is processed asymmetrically in this filter. The Kullback-Leibler divergence is the basis of a cost function that makes it possible to deal with different types of occlusions. The algorithm performance has been checked in a real map. The results are excellent in environments with dynamic and unmodeled obstacles, a fact that causes occlusions in the sensing area.
机译:移动机器人所需的最重要技能之一是即使在充满挑战的环境中也能够获得自己的位置。传感系统提供的信息在这里用于解决全局定位问题。在我们以前的工作中,我们设计了基于进化策略的不同算法来解决上述任务。本文介绍了最新进展。定位模块的引擎是马尔可夫链蒙特卡洛采样技术和微分进化方法的结合,基于最小化适应度函数生成了粒子滤波器。机器人的姿态是根据一组可能的位置估算出来的,这些位置以成本值加权。感知传感器的测量值与预测图中已知的传感器值一起使用,以定义要优化的成本函数。尽管大多数定位方法都依赖于二次适应度函数,但是在此滤波器中不对称地处理了感测到的信息。 Kullback-Leibler散度是成本函数的基础,该成本函数可以处理不同类型的遮挡。算法性能已在真实地图中进行了检查。在有动态障碍物和未建模障碍物的环境中,结果极好,这一事实会导致感应区域被遮挡。

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