Demining Robots: Overview and Mission Strategy for Landmine Identification in the Field

F. Crawford, T. Bechtel, G. Pochanin, P. Falorni, K. Asfar, L. Capineri, M. Dimitri
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引用次数: 1

Abstract

We present an overview of a system under development, with NATO funding, wherein a team of robots uses multiple sensors to identify and characterize buried landmines or other explosive threats. Two of these sensors are ground penetrating radars (GPRs). One is an ultra-wideband impulse radar and the other is a continuous wave holographic subsurface imaging radar. In an earlier phase of the project, these sensors were successfully tested using a prototype robot on which both GPRs were mounted. The separate robots are connected via a central unit with shared data and communication. We describe the planned strategy using these two key sensors and others to automatically navigate and efficiently survey a minefield. With this novel approach, and with tripwire detection enabled on the first robot, the complex task of threat detection will be automatic and rendered completely safe for the operator. The risk of unexpected blasts from undetected tripwires or triggered pressure plates will also be mitigated.
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排雷机器人:现场地雷识别概述与任务策略
我们概述了在北约资助下正在开发的系统,其中一个机器人团队使用多个传感器来识别和表征埋藏的地雷或其他爆炸性威胁。其中两个传感器是探地雷达(GPRs)。一种是超宽带脉冲雷达,另一种是连续波全息地下成像雷达。在项目的早期阶段,这些传感器在安装了两个gpr的原型机器人上成功地进行了测试。独立的机器人通过一个共享数据和通信的中心单元连接在一起。我们描述了使用这两个关键传感器和其他传感器来自动导航和有效测量雷区的计划策略。有了这种新颖的方法,并在第一个机器人上启用绊线检测,复杂的威胁检测任务将自动完成,并且对操作员来说是完全安全的。由未被发现的绊网或触发的压力板引发意外爆炸的风险也将得到缓解。
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