Rapid free-space mapping from a single omnidirectional camera

Robert Lukierski, Stefan Leutenegger, A. Davison
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引用次数: 15

Abstract

Low-cost robots such as floor cleaners generally rely on limited perception and simple algorithms, but some new models now have enough sensing capability and computation power to enable Simultaneous Localisation And Mapping (SLAM) and intelligent guided navigation. In particular, computer vision is now a serious option in low cost robotics, though its use to date has been limited to feature-based mapping for localisation. Dense environment perception such as free space finding has required additional specialised sensors, adding expense and complexity. Here we show that a robot with a single passive omnidirectional camera can perform rapid global free-space reasoning within typical rooms. Upon entering a new room, the robot makes a circular movement to capture a closely-spaced omni image sequence with disparity in all horizontal directions. feature-based visual SLAM procedure obtains accurate poses for these frames before passing them to a dense matching step, 3D semi-dense reconstruction and visibility reasoning. The result is turned into a 2D occupancy map, which can be improved and extended if necessary through further movement. This rapid, passive technique can capture high quality free space information which gives a robot a global understanding of the space around it. We present results in several scenes, including quantitative comparison with laser-based mapping.
快速自由空间映射从一个单一的全向相机
像扫地机器人这样的低成本机器人通常依赖于有限的感知和简单的算法,但一些新型号现在有足够的传感能力和计算能力来实现同步定位和地图(SLAM)和智能导航。特别是,计算机视觉现在是低成本机器人的一个重要选择,尽管迄今为止它的使用仅限于基于特征的定位映射。密集的环境感知,如寻找自由空间,需要额外的专业传感器,增加了成本和复杂性。在这里,我们展示了一个具有单个被动全向摄像头的机器人可以在典型的房间内进行快速的全局自由空间推理。当进入一个新房间时,机器人做一个圆周运动,以捕捉在各个水平方向上视差的紧密间隔的全图像序列。基于特征的视觉SLAM程序获得这些帧的准确姿态,然后将其传递给密集匹配步骤,三维半密集重建和可见性推理。结果被转换成二维占用地图,如果有必要,可以通过进一步的移动来改进和扩展。这种快速、被动的技术可以捕获高质量的自由空间信息,使机器人能够全面了解周围的空间。我们在几个场景中展示了结果,包括与基于激光的映射的定量比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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