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KISS - 保持静态 SLAMMOT - 将运动目标跟踪集成到扩展卡尔曼滤波同步定位与地图构建(EKF - SLAM)算法中的成本

KISS-Keep It Static SLAMMOT-The Cost of Integrating Moving Object Tracking into an EKF-SLAM Algorithm.

作者信息

Mandel Nicolas, Kompe Nils, Gerwin Moritz, Ernst Floris

机构信息

Institute of Robotics and Cognitive Systems, University of Lübeck, 23562 Lübeck, Germany.

出版信息

Sensors (Basel). 2024 Sep 4;24(17):5764. doi: 10.3390/s24175764.

Abstract

The treatment of moving objects in simultaneous localization and mapping (SLAM) is a key challenge in contemporary robotics. In this paper, we propose an extension of the EKF-SLAM algorithm that incorporates moving objects into the estimation process, which we term KISS. We have extended the robotic vision toolbox to analyze the influence of moving objects in simulations. Two linear and one nonlinear motion models are used to represent the moving objects. The observation model remains the same for all objects. The proposed model is evaluated against an implementation of the state-of-the-art formulation for moving object tracking, DATMO. We investigate increasing numbers of static landmarks and dynamic objects to demonstrate the impact on the algorithm and compare it with cases where a moving object is mistakenly integrated as a static landmark (false negative) and a static landmark as a moving object (false positive). In practice, distances to dynamic objects are important, and we propose the safety-distance-error metric to evaluate the difference between the true and estimated distances to a dynamic object. The results show that false positives have a negligible impact on map distortion and ATE with increasing static landmarks, while false negatives significantly distort maps and degrade performance metrics. Explicitly modeling dynamic objects not only performs comparably in terms of map distortion and ATE but also enables more accurate tracking of dynamic objects with a lower safety-distance-error than DATMO. We recommend that researchers model objects with uncertain motion using a simple constant position model, hence we name our contribution Keep it Static SLAMMOT. We hope this work will provide valuable data points and insights for future research into integrating moving objects into SLAM algorithms.

摘要

同时定位与地图构建(SLAM)中移动物体的处理是当代机器人技术中的一项关键挑战。在本文中,我们提出了扩展卡尔曼滤波同时定位与地图构建(EKF - SLAM)算法,将移动物体纳入估计过程,我们将其称为KISS。我们扩展了机器人视觉工具箱,以分析模拟中移动物体的影响。使用两个线性和一个非线性运动模型来表示移动物体。所有物体的观测模型保持不变。针对移动物体跟踪的最新公式实现DATMO,对所提出的模型进行评估。我们研究了越来越多的静态地标和动态物体,以展示其对算法的影响,并将其与移动物体被误当作静态地标(误报)以及静态地标被误当作移动物体(漏报)的情况进行比较。在实际应用中,到动态物体的距离很重要,我们提出安全距离误差度量来评估到动态物体的真实距离与估计距离之间的差异。结果表明,随着静态地标的增加,误报对地图失真和平均绝对轨迹误差(ATE)的影响可忽略不计,而漏报会显著扭曲地图并降低性能指标。明确地对动态物体进行建模不仅在地图失真和ATE方面表现相当,而且与DATMO相比,能够以更低的安全距离误差更准确地跟踪动态物体。我们建议研究人员使用简单的恒定位置模型对具有不确定运动的物体进行建模,因此我们将我们的贡献命名为保持静态的同时定位与地图构建中移动物体建模(Keep it Static SLAMMOT)。我们希望这项工作将为未来将移动物体集成到SLAM算法的研究提供有价值的数据点和见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f1e9/11398253/bb5b4ed05d76/sensors-24-05764-g0A1.jpg

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