平台仿真中ROS导航栈与动态环境信息的集成

Pedro H. F. Mendes, André Mendes, Luís F. C. Duarte
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引用次数: 1

摘要

感知环境是机器人自主导航必须完成的一项关键任务。此外,它必须很好地执行,使航行更安全,无碰撞。随着自主移动机器人被部署在多个应用中,它们经常遇到动态栖息地,在那里感知和感知环境变得更加困难。这项工作提出将无线传感器网络与机器人操作系统集成,将数据整合到机器人导航使用的分层成本地图中,为算法提供有关区域的高级信息。该架构在仿真中进行了测试,在那里我们可以验证结构并收集数据,显示通过更好的参数化计算改进的路径和减少的计算负载。因此,该策略确保了有关环境的先进信息改善了导航过程。
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Integration of ROS Navigation Stack with Dynamic Environment Information in Gazebo Simulation
Sensing the environment is a crucial task that robots have to perform to navigate autonomously. Furthermore, it must be well executed to make navigation safer and collision-free. As autonomous mobile robots are being deployed in several applications, they often encounter dynamic habitats, where sensing and perceiving the environment becomes harder. This work proposes integrating a wireless sensor network with the Robotic Operating System to incorporate data into layered costmaps used by the robot to navigate, feeding the algorithms with advanced information about the territory. The architecture was tested in simulation, where we could validate the structure and collect data showing improved paths calculated and reduced computational load through better parametrization. Thus, this strategy ensures that the advanced information about the environment has improved the navigation process.
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