Visual navigation of wheeled robots : compensating floor undulations

A. Bohori, K. Venkatesh, Vinay Singh, A. Mukerjee
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Abstract

Optical flow based navigation systems depend on the planar navigation constraint, which reduces search to two parameters-translation velocity in the headed direction and the rotational velocity about vertical axis. However, this constraint often fails in practice when motion undulations caused by floor variations or wheel kinematics generate dominating vertical flows, resulting in widely erroneous depth maps. In this work, these floor undulations are modeled as rotations about an axis derivable from the robot kinematics. These are then dynamically calibrated and compensated for, resulting in more accurate depth maps. Optical flow is now computed using the so called generalized dynamic image model [S. Negahdaripour, 1998] which results in a much less noisy depth map. Using fuzzy inference to ameliorate the effects of noise added in the differentiation process, we show an implementation on a Pioneer-II mobile robot that navigates successfully in unknown cluttered static environments
轮式机器人视觉导航:补偿地面波动
基于光流的导航系统依赖于平面导航约束,将搜索过程简化为两个参数:前进方向的平移速度和垂直轴的旋转速度。然而,在实践中,当由地板变化或车轮运动学引起的运动波动产生主导的垂直流时,这种约束常常失效,导致深度图普遍错误。在这项工作中,这些地板波动被建模为围绕由机器人运动学衍生的轴的旋转。然后对这些进行动态校准和补偿,从而获得更准确的深度图。现在使用所谓的广义动态图像模型来计算光流[S]。Negahdaripour, 1998]得到的深度图噪声要小得多。利用模糊推理来改善微分过程中添加的噪声的影响,我们展示了在未知杂乱静态环境中成功导航的先锋- ii移动机器人的实现
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