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An Adaptive SVSF-SLAM Algorithm in Dynamic Environment for Cooperative Unmanned Vehicles

机译:合作无人车动态环境的自适应SVSF-SLAM算法

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The aim of this paper is to accomplish the Unmanned Ground Vehicle (UGV) full self-governance by developing tools that are able to give an accurate automatic localization in unknown environment. Many techniques have been developed to make the most type of sensors solving the Simultaneous Localization and Mapping (SLAM) problem in static environment; whereas, little attention has been paid to the more realistic case of a dynamic environment. A solution to SLAM in dynamic environments would open up a vast range of potential applications. Filtering strategies play an important role to solve the SLAM problem, and are used to extract knowledge of the true states typically from noisy measurements or observations made of the system. In this context, we propose the adaptive Smooth Variable Structure Filter (SVSF) based approach to solve the cooperative SLAM problem. In our work, we introduce a covariance matrix to assess the uncertainty of the adaptive SVSF and to improve its performance and increase the number of its useful applications. The proposed algorithm is validated in real-world and the obtained results confirm the efficiency in terms of computational time and robustness.
机译:本文的目的是通过开发能够在未知环境中提供准确的自动定位的工具来实现无人机的地面车辆(UGV)全自治。已经开发了许多技术来使最多类型的传感器解决静态环境中同时定位和映射(SLAM)问题;虽然,对动态环境的更现实的案例,但很少关注。在动态环境中的SLAM解决方案将打开大量的潜在应用。过滤策略在解决流动问题上发挥着重要作用,用于提取通常从系统噪声测量或观察结果的真实状态的知识。在这种情况下,我们提出了基于自适应光滑的可变结构滤波器(SVSF)来解决协同场所问题。在我们的工作中,我们介绍了协方差矩阵,以评估自适应SVSF的不确定性,并提高其性能并增加其有用应用的数量。所提出的算法在现实世界中验证,所获得的结果证实了计算时间和鲁棒性方面的效率。

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