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AiRobSim: Simulating a Multisensor Aerial Robot for Urban Search and Rescue Operation and Training

机译:Airobsim:模拟用于城市搜索和救援运营和培训的多传感器空中机器人

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摘要

Unmanned aerial vehicles (UAVs), equipped with a variety of sensors, are being used to provide actionable information to augment first responders’ situational awareness in disaster areas for urban search and rescue (SaR) operations. However, existing aerial robots are unable to sense the occluded spaces in collapsed structures, and voids buried in disaster rubble that may contain victims. In this study, we developed a framework, AiRobSim, to simulate an aerial robot to acquire both aboveground and underground information for post-disaster SaR. The integration of UAV, ground-penetrating radar (GPR), and other sensors, such as global navigation satellite system (GNSS), inertial measurement unit (IMU), and cameras, enables the aerial robot to provide a holistic view of the complex urban disaster areas. The robot-collected data can help locate critical spaces under the rubble to save trapped victims. The simulation framework can serve as a virtual training platform for novice users to control and operate the robot before actual deployment. Data streams provided by the platform, which include maneuver commands, robot states and environmental information, have potential to facilitate the understanding of the decision-making process in urban SaR and the training of future intelligent SaR robots.
机译:无人驾驶航空公司(无人机)配备各种传感器,用于提供可操作的信息,以增强首先在城市搜索和救援(SAR)运营中灾区的灾害区域的态势意识。然而,现有的空中机器人无法在可能包含受害者的灾难碎石中感到沉碎的结构中的遮挡空间。在这项研究中,我们开发了一个框架Airobsim,以模拟空中机器人来获取灾后SAR的地上和地下信息。 UAV,地面穿透雷达(GPR)和其他传感器的整合,例如全局导航卫星系统(GNSS),惯性测量单元(IMU)和相机,使空中机器人能够提供复杂的城市的整体视图灾区。机器人收集的数据可以帮助在瓦砾下找到关键空间以保存被困受害者。仿真框架可以作为新手用户的虚拟培训平台,以便在实际部署之前控制和操作机器人。平台提供的数据流包括机动命令,机器人状态和环境信息,有可能促进对城市特区的决策过程以及未来智能SAR机器人的培训。

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