首页> 外文会议>European Robotics Symposium 2006(EUROS); Springer Tracts in Advanced Robotics; vol.22 >Robust Monte-Carlo Localization Using Adaptive Likelihood Models
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Robust Monte-Carlo Localization Using Adaptive Likelihood Models

机译:使用自适应似然模型的鲁棒蒙特卡洛定位

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In probabilistic mobile robot localization, the development of the sensor model plays a crucial role as it directly influences the efficiency and the robustness of the localization process. Sensor models developed for particle filters compute the likelihood of a sensor measurement by assuming that one of the particles accurately represents the true location of the robot. In practice, however, this assumption is often strongly violated, especially when using small sample sets or during global localization. In this paper we introduce a novel, adaptive sensor model that explicitly takes the limited representational power of particle filters into account. As a result, our approach uses smooth likelihood functions during global localization and more peaked functions during position tracking. Experiments show that our technique significantly outperforms existing, static sensor models.
机译:在概率移动机器人定位中,传感器模型的开发起着至关重要的作用,因为它直接影响定位过程的效率和鲁棒性。为粒子过滤器开发的传感器模型通过假设其中一个粒子准确地代表了机器人的真实位置来计算传感器测量的可能性。但是实际上,通常会严重违反此假设,尤其是在使用小样本集或进行全局定位时。在本文中,我们介绍了一种新颖的自适应传感器模型,该模型明确考虑了粒子滤波器的有限表示能力。结果,我们的方法在全局定位过程中使用了平滑似然函数,在位置跟踪过程中使用了更多的峰值函数。实验表明,我们的技术明显优于现有的静态传感器模型。

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