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Perception for Learned Trafficability Models

机译:知悉的交通能力模型

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摘要

Unmanned ground vehicles (UGV), traversing open terrain, require the capability of identifying non-geometric barriers or impediments to navigation, such as soft soil, fine sand, mud, snow, compliant vegetation, washboard, and ruts. Given the ever changing nature of these terrain characteristics, for an UVG to be able to consistently navigate such barriers, it must have the ability to learn from and to adapt to changes in these environmental conditions. As part of ongoing research co-operation with the Defense Research Establishment Suffield (DRES), Scientific Instrumentation Ltd. (SIL) has developed a Terrain Simulator that allows for the investigation of terrain perception and of learning techniques.
机译:穿越空旷地形的无人地面车辆(UGV)要求能够识别非几何障碍或航行障碍,例如软土,细沙,泥土,雪,顺应性植被,搓板和车辙。鉴于这些地形特征的不断变化的性质,UVG能够始终如一地穿越这些障碍,因此它必须具有学习并适应这些环境条件变化的能力。作为与国防研究机构Suffield(DRES)正在进行的研究合作的一部分,科学仪器有限公司(SIL)开发了一种Terrain Simulator,可用于研究地形感知和学习技术。

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