Bi-RRT path extraction and curve fitting smooth with visual based configuration space mapping

Emrah Dönmez, A. F. Kocamaz, Mahmut Dirik
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引用次数: 20

Abstract

Path planning is the one of the most basic research areas in robotics. It simply concern about acquiring a safe path with admissible cost. In this study, we adapt bidirectional rapidly random exploring tree (Bi-RRT) path extraction to visual based configuration space map hosting obstacles and smooth result path with curve fitting models. Firstly, a map of the configuration space is created and robot, target positions are detected with threshold based object detection. There are two positions where two distinct RRT are launched on this map. These positions are robot initial position and target position. Both RRT try to reach target with random branches in each iterations. When one of these RRT branch intersect with other RRT branch, the algorithm is stopped. The acquired trajectory is the path between initial position and target position. But acquired path is generally close to the obstacles and unnecessary branches or jagged parts can be formed. Therefore, to provide safety object dilation over obstacles are used. Finally, the path is smoothed with curve fitting models. We conduct several experiments to evaluate Bi-RRT performance.
Bi-RRT路径提取和曲线拟合采用基于视觉的构型空间映射
路径规划是机器人技术中最基础的研究领域之一。它只是关心以可接受的成本获得一条安全的路径。在本研究中,我们将双向快速随机探索树(Bi-RRT)路径提取应用于基于视觉的构型空间地图,该地图包含障碍物和平滑结果路径,并采用曲线拟合模型。首先,建立构型空间映射,利用基于阈值的目标检测方法检测机器人的目标位置;在这张地图上有两个不同的RRT发射位置。这些位置是机器人的初始位置和目标位置。两个RRT都试图在每次迭代中使用随机分支到达目标。当其中一个RRT分支与另一个RRT分支相交时,算法停止。获得的轨迹是初始位置和目标位置之间的路径。但所获得的路径通常靠近障碍物,可能形成不必要的分支或锯齿状部分。因此,为了提供安全,物体在障碍物上膨胀。最后,用曲线拟合模型对路径进行平滑处理。我们进行了几个实验来评估Bi-RRT的性能。
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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