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Localising Faster: Efficient and precise lidar-based robot localisation in large-scale environments

机译:更快地进行本地化:在大型环境中高效,精确地基于激光雷达的机器人本地化

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This paper proposes a novel approach for global localisation of mobile robots in large-scale environments. Our method leverages learning-based localisation and filtering-based localisation, to localise the robot efficiently and precisely through seeding Monte Carlo Localisation (MCL) with a deeplearned distribution. In particular, a fast localisation system rapidly estimates the 6-DOF pose through a deep-probabilistic model (Gaussian Process Regression with a deep kernel), then a precise recursive estimator refines the estimated robot pose according to the geometric alignment. More importantly, the Gaussian method (i.e. deep probabilistic localisation) and nonGaussian method (i.e. MCL) can be integrated naturally via importance sampling. Consequently, the two systems can be integrated seamlessly and mutually benefit from each other. To verify the proposed framework, we provide a case study in large-scale localisation with a 3D lidar sensor. Our experiments on the Michigan NCLT long-term dataset show that the proposed method is able to localise the robot in 1.94 s on average (median of 0.8 s) with precision 0.75 m in a largescale environment of approximately 0.5 km2.
机译:本文提出了一种在大规模环境中对移动机器人进行全局定位的新颖方法。我们的方法利用基于学习的本地化和基于过滤的本地化,通过播种具有深度学习分布的蒙特卡洛本地化(MCL)来高效,精确地定位机器人。特别是,快速定位系统会通过深度概率模型(具有深核的高斯过程回归)快速估算6自由度姿态,然后由精确的递归估算器根据几何对齐方式精简估算的机器人姿态。更重要的是,高斯方法(即深度概率定位)和非高斯方法(即MCL)可以通过重要性采样自然地集成在一起。因此,这两个系统可以无缝集成,并且可以互惠互利。为了验证所提出的框架,我们提供了使用3D激光雷达传感器进行大规模定位的案例研究。我们在密歇根州NCLT长期数据集上的实验表明,该方法能够在约0.5 km的大型环境中以平均0.75 m的精度平均以1.94 s(中值为0.8 s)定位机器人。 2

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