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Frequency response method for terrain classification in autonomous ground vehicles

机译:自主地面车辆地形分类的频率响应方法

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摘要

Many autonomous ground vehicle (AGV) missions, such as those related to agricultural applications, search and rescue, or reconnaissance and surveillance, require the vehicle to operate in difficult outdoor terrains such as sand, mud, or snow. To ensure the safety and performance of AGVs on these terrains, a terrain-dependent driving and control system can be implemented. A key first step in implementing this system is autonomous terrain classification. It has recently been shown that the magnitude of the spatial frequency response of the terrain is an effective terrain signature. Furthermore, since the spatial frequency response is mapped by an AGV’s vibration transfer function to the frequency response of the vibration measurements, the magnitude of the latter frequency responses also serve as a terrain signature. Hence, this paper focuses on terrain classification using vibration measurements. Classification is performed using a probabilistic neural network, which can be implemented online at relatively high computational speeds. The algorithm is applied experimentally to both an ATRV-Jr and an eXperimental Unmanned Vehicle (XUV) at multiple speeds. The experimental results show the efficacy of the proposed approach.
机译:许多自动地面车辆(AGV)任务(例如与农业应用,搜索和救援或侦察和监视有关的任务)要求车辆在困难的户外地形(如沙子,泥泞或积雪)中运行。为了确保AGV在这些地形上的安全性和性能,可以实施基于地形的驾驶和控制系统。实施此系统的关键的第一步是自主地形分类。最近显示,地形的空间频率响应的幅度是有效的地形特征。此外,由于空间频率响应是通过AGV的振动传递函数映射到振动测量的频率响应的,因此后者的频率响应的大小也可以用作地形特征。因此,本文着重于使用振动测量进行地形分类。使用概率神经网络进行分类,该网络可以相对较高的计算速度在线实现。该算法在多种速度下都被实验性地应用于ATRV-Jr和电子无人飞行器(XUV)。实验结果表明了该方法的有效性。

著录项

  • 来源
    《Autonomous Robots 》 |2008年第4期| 337-347| 共11页
  • 作者单位

    Department of Electrical and Computer Engineering FAMU-FSU College of Engineering 2525 Pottsdamer Street Tallahassee FL 32310 USA;

    Department of Mechanical Engineering FAMU-FSU College of Engineering 2525 Pottsdamer Street Tallahassee FL 32310 USA;

    Department of Mechanical Engineering FAMU-FSU College of Engineering 2525 Pottsdamer Street Tallahassee FL 32310 USA;

    Department of Mechanical Engineering FAMU-FSU College of Engineering 2525 Pottsdamer Street Tallahassee FL 32310 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Autonomous ground vehicles; Probabilistic neural network;

    机译:自主地面车辆;概率神经网络;

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