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Appearance-Based Sequential Robot Localization Using a Patchwise Approximation of a Descriptor Manifold

机译:基于外观的顺序机器人本地化使用描述符歧管的剪辑近似

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摘要

This paper addresses appearance-based robot localization in 2D with a sparse, lightweight map of the environment composed of descriptor–pose image pairs. Based on previous research in the field, we assume that image descriptors are samples of a low-dimensional Descriptor Manifold that is locally articulated by the camera pose. We propose a piecewise approximation of the geometry of such Descriptor Manifold through a tessellation of so-called Patches of Smooth Appearance Change (PSACs), which defines our appearance map. Upon this map, the presented robot localization method applies both a Gaussian Process Particle Filter (GPPF) to perform camera tracking and a Place Recognition (PR) technique for relocalization within the most likely PSACs according to the observed descriptor. A specific Gaussian Process (GP) is trained for each PSAC to regress a Gaussian distribution over the descriptor for any particle pose lying within that PSAC. The evaluation of the observed descriptor in this distribution gives us a likelihood, which is used as the weight for the particle. Besides, we model the impact of appearance variations on image descriptors as a white noise distribution within the GP formulation, ensuring adequate operation under lighting and scene appearance changes with respect to the conditions in which the map was constructed. A series of experiments with both real and synthetic images show that our method outperforms state-of-the-art appearance-based localization methods in terms of robustness and accuracy, with median errors below 0.3 m and 6°.
机译:本文以2D为基于外观的机器人定位,具有由描述符 - 姿势图像对组成的环境的稀疏,轻量级图。基于以前的领域的研究,假设图像描述符是由相机姿势局部铰接的低维描述符歧管的样本。我们提出了通过所谓的平滑外观变化(PSAC)的所谓斑块的曲线来提出这种描述符歧管的几何形状的分段近似,其定义了我们的外观图。在该地图上,所提出的机器人定位方法应用高斯过程粒子滤波器(GPPF),以根据观察到的描述符在最可能的PSAC内进行相机跟踪和用于重锁定的位置识别(PR)技术。针对每个PSAC培训特定的高斯工艺(GP),以在该PSAC内的任何粒子姿势的描述符上回归高斯分布。该分布中观察到的描述符的评估使我们具有似然,其用作粒子的重量。此外,我们模拟了图像描述符的外观变化的影响,作为GP制剂内的白噪声分布,确保在照明和场景外观下的适当操作相对于构造地图的条件。具有实际和合成图像的一系列实验表明,我们的方法在鲁棒性和准确性方面优于最先进的外观定位方法,中值误差低于0.3米和6°。

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