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Soft Computing-based Terrain Visual Sensing and Data Fusion for Unmanned Ground Robotic Systems

机译:基于软计算的无人地面机器人系统地形视觉传感和数据融合

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In this paper, we have primarily discussed technical challenges and navigational skill requirements of mobile robots for traversability path planning in natural terrain environments similar to Mars surface terrains. We have described different methods for detection of salient terrain features based on imaging texture analysis techniques. We have also presented three competing techniques for terrain traversability assessment of mobile robots navigating in unstructured natural terrain environments. These three techniques include: a rule-based terrain classifier, a neural network-based terrain classifier, and a fuzzy-logic terrain classifier. Each proposed terrain classifier divides a region of natural terrain into finite sub-terrain regions and classifies terrain condition exclusively within each sub-terrain region based on terrain visual clues. The Kalman Filtering technique is applied for aggregative fusion of sub-terrain assessment results. The last two terrain classifiers are shown to have remarkable capability for terrain traversability assessment of natural terrains. We have conducted a comparative performance evaluation of all three terrain classifiers and presented the results in this paper.
机译:在本文中,我们主要讨论了在类似于火星表面地形的自然地形环境中进行可穿越性路径规划的移动机器人的技术挑战和导航技能要求。我们已经描述了基于成像纹理分析技术的显着地形特征检测的不同方法。我们还提出了三种竞争技术,用于在非结构化自然地形环境中导航的移动机器人的地形可穿越性评估。这三种技术包括:基于规则的地形分类器,基于神经网络的地形分类器和模糊逻辑地形分类器。每个提出的地形分类器将自然地形的一个区域划分为有限的子地形区域,并根据地形的视觉线索专门在每个子地形区域内对地形条件进行分类。卡尔曼滤波技术用于亚地形评估结果的聚合融合。最后两个地形分类器显示出对自然地形的可穿越性评估的出色能力。我们对所有三个地形分类器进行了比较性能评估,并在本文中给出了结果。

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