首页> 外文会议>Robotics: Science and Systems Conference; 20050608-11; Cambridge,MA(US) >Interacting Markov Random Fields for Simultaneous Terrain Modeling and Obstacle Detection
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Interacting Markov Random Fields for Simultaneous Terrain Modeling and Obstacle Detection

机译:交互式马尔可夫随机场同时进行地形建模和障碍物检测

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Autonomous navigation in outdoor environments with vegetation is difficult because available sensors make very indirect measurements on quantities of interest such as the supporting ground height and the location of obstacles. We introduce a terrain model that includes spatial constraints on these quantities to exploit structure found in outdoor domains and use available sensor data more effectively. The model consists of a latent variable that establishes a prior that favors vegetation of a similar height, plus multiple Markov random fields that incorporate neighborhood interactions and impose a prior on smooth ground and class continuity. These Markov random fields interact through a hidden semi-Markov model that enforces a prior on the vertical structure of elements in the environment. The system runs in real-time and has been trained and tested using real data from an agricultural setting. Results show that exploiting the 3D structure inherent in outdoor domains significantly improves ground height estimates and obstacle detection accuracy.
机译:在有植被的室外环境中,很难进行自动导航,因为可用的传感器对感兴趣的数量(例如支撑地面的高度和障碍物的位置)进行非常间接的测量。我们引入了一个地形模型,其中包括对这些数量的空间限制,以利用室外域中发现的结构并更有效地使用可用的传感器数据。该模型包括一个潜在变量,该变量建立了一个优先级,该优先级有利于相似高度的植被,以及多个马尔可夫随机场,这些随机场合并了邻域的相互作用,并在光滑的地面和类别连续性上施加了先验。这些马尔可夫随机场通过隐藏的半马尔可夫模型进行交互,该模型在环境中元素的垂直结构上强制执行先验。该系统实时运行,并已使用来自农业环境的真实数据进行了培训和测试。结果表明,利用室外区域固有的3D结构可以显着提高地面高度估计和障碍物检测的准确性。

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