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SLAM with adaptive noise tuning for the marine environment

机译:船与海洋环境的自适应噪声调整

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This paper presents an alternative formulation for the Factorised Solution to the Simultaneous Localization and Mapping (FastSLAM) algorithm using an Adaptive Extended Kalman Filter based approach. The FastSLAM algorithm jointly estimates the pose of the robot and the location of landmarks on the feature based map by factorising the SLAM posterior into a localisation component which is implemented using a particle filter, and a mapping component implemented via independent Kalman Filters. To facilitate non-divergent state estimates, the process model noise statistics of the robot must be modelled correctly, and maintain validity in all the conditions encountered by the vehicle. This is infeasible in cases where the vehicle's model may degrade over time, or in applications involving complex, noisy, highly nonlinear environments such as marine environments. This paper proposes an algorithm to recursively estimate the state and the motion model noise covariance simultaneously, using a moving window of previous estimates. The algorithm proposed is then tested on an Autonomous Surface Craft (ASC) in a marine environment, and the results obtained are compared to current state of the art algorithms. Results from the experiments show promising performance for the proposed SLAM framework, especially in highly noisy environments with nonlinear process models.
机译:本文呈现使用自适应扩展卡尔曼滤波器为基础的方法的因式分解解法同时定位和映射(的FastSLAM)算法的替代制剂。所述的FastSLAM算法共同估计机器人的姿态和基于特征的地图上的地标通过因子分解的SLAM后到被使用粒子滤波器来实现本地化组件的位置,并通过独立的卡尔曼滤波器实现的映射组件。为了便于非发散状态估计,机器人的过程模型噪声统计数据必须正确建模,并在所有车辆中遇到的条件保持有效性。这是在车辆的模型可能随着时间的推移,或涉及复杂的,嘈杂的,高度非线性的环境中应用,如海洋环境的情况下不可行。本文提出的算法以递归估计状态和运动模型噪声协方差同时,利用以前的估计的移动窗口。提出的算法然后在自治水面舰艇(ASC)在海洋环境中进行测试,得到的结果进行比较,以本领域的算法当前状态。从实验结果表明,有希望拟议SLAM架构的性能,特别是在高噪声环境中的非线性过程模型。

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