带有3d传感器的自动门检测

Sebastian Meyer zu Borgsen, Matthias Schöpfer, Leon Ziegler, S. Wachsmuth
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引用次数: 18

摘要

服务型机器人分享人类的生活空间。因此,他们应该对环境有类似的概念,而不是事先标记所有内容。关闭的门的检测是具有挑战性的,因为它们看起来有不同的材料,设计,甚至可能包括玻璃镶嵌。同时,对它们的探测在国内任何类型的导航任务中都是至关重要的。典型的二维物体识别算法可能无法处理各种光学门。低成本红外3d传感器的改进使机器人能够将其环境感知为空间结构。因此,我们提出了一种新的门检测算法,该算法利用门的基本结构知识,并基于约束区域增长从点云中提取门的部分。这些部分用高斯概率加权,并组合起来创建一个总体概率度量。为了证明我们方法的有效性,我们从不同角度和距离获取了不同门的真实数据集。
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Automated Door Detection with a 3D-Sensor
Service robots share the living space of humans. Thus, they should have a similar concept of the environment without having everything labeled beforehand. The detection of closed doors is challenging because they appear with different materials, designs and can even include glass inlays. At the same time their detection is vital in any kind of navigation tasks in domestic environments. A typical 2D object recognition algorithm may not be able to handle the large optical variety of doors. Improvements of low-cost infrared 3D-sensors enable robots to perceive their environment as spatial structure. Therefore we propose a novel door detection algorithm that employs basic structural knowledge about doors and enables to extract parts of doors from point clouds based on constraint region growing. These parts get weighted with Gaussian probabilities and are combined to create an overall probability measure. To show the validity of our approach, a realistic dataset of different doors from different angles and distances was acquired.
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