首页> 外文会议>2014 13th International Conference on Control Automation Robotics amp; Vision >Fusing laser reflectance and image data for terrain classification for small autonomous robots
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Fusing laser reflectance and image data for terrain classification for small autonomous robots

机译:融合激光反射率和图像数据以对小型自主机器人进行地形分类

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摘要

Knowing the terrain is vital for small autonomous robots traversing unstructured outdoor environments. We present a technique using 3D laser point clouds combined with RGB camera images to classify terrain into four pre-defined classes: grass, sand, concrete, and metal. Our technique first segments the point cloud into distinct regions and then applies a simple classifier to determine the classification of each region. We demonstrate three classification and four segmentation algorithms on five outdoor environments. Classification and segmentation algorithms which use more information outperform information poor combinations.
机译:了解地形对于小型自主机器人穿越无结构的户外环境至关重要。我们提出了一种结合3D激光点云和RGB摄像机图像的技术,将地形分为四个预定义类别:草,沙,混凝土和金属。我们的技术首先将点云划分为不同的区域,然后应用简单的分类器来确定每个区域的分类。我们在五个室外环境中演示了三种分类和四种分割算法。使用更多信息的分类和分割算法的性能优于信息差的组合。

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