Ascending stairway modeling from dense depth imagery for traversability analysis

J. Delmerico, D. Baran, P. David, J. Ryde, Jason J. Corso
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引用次数: 45

Abstract

Localization and modeling of stairways by mobile robots can enable multi-floor exploration for those platforms capable of stair traversal. Existing approaches focus on either stairway detection or traversal, but do not address these problems in the context of path planning for the autonomous exploration of multi-floor buildings. We propose a system for detecting and modeling ascending stairways while performing simultaneous localization and mapping, such that the traversability of each stairway can be assessed by estimating its physical properties. The long-term objective of our approach is to enable exploration of multiple floors of a building by allowing stairways to be considered during path planning as traversable portals to new frontiers. We design a generative model of a stairway as a single object. We localize these models with respect to the map, and estimate the dimensions of the stairway as a whole, as well as its steps. With these estimates, a robot can determine if the stairway is traversable based on its climbing capabilities. Our system consists of two parts: a computationally efficient detector that leverages geometric cues from dense depth imagery to detect sets of ascending stairs, and a stairway modeler that uses multiple detections to infer the location and parameters of a stairway that is discovered during exploration. We demonstrate the performance of this system when deployed on several mobile platforms using a Microsoft Kinect sensor.
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基于密集深度图像的上升楼梯可穿越性建模
通过移动机器人对楼梯进行定位和建模,可以对那些能够通过楼梯的平台进行多层探索。现有的方法侧重于楼梯检测或穿越,但没有在多层建筑自主探索的路径规划背景下解决这些问题。我们提出了一个系统,用于检测和建模上升楼梯,同时执行同步定位和映射,这样每个楼梯的可穿越性可以通过估计其物理性质来评估。我们的方法的长期目标是通过在路径规划中考虑楼梯作为通往新边界的可穿越门户来探索建筑的多个楼层。我们设计了一个生成模型的楼梯作为一个单一的对象。我们根据地图对这些模型进行局部化,并估计楼梯的整体尺寸及其台阶。有了这些估计,机器人就可以根据自己的攀爬能力来确定楼梯是否可穿越。我们的系统由两部分组成:一个计算效率高的检测器,它利用密集深度图像中的几何线索来检测上升的楼梯集,以及一个楼梯建模器,它使用多个检测器来推断在探索过程中发现的楼梯的位置和参数。我们演示了该系统在使用微软Kinect传感器部署在多个移动平台上时的性能。
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