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Contour-based next-best view planning from point cloud segmentation of unknown objects

机译:基于轮廓的下一个最佳视图计划从未知对象的点云分割

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摘要

A novel strategy is presented to determine the next-best view for a robot arm, equipped with a depth camera in eye-in-hand configuration, which is oriented to autonomous exploration of unknown objects. Instead of maximizing the total size of the expected unknown volume that becomes visible, the next-best view is chosen to observe the border of incomplete objects. Salient regions of space that belong to the objects are detected, without any prior knowledge, by applying a point cloud segmentation algorithm. The system uses a Kinect V2 sensor, which has not been considered in previous works on next-best view planning, and it exploits KinectFusion to maintain a volumetric representation of the environment. A low-level procedure to reduce Kinect V2 invalid points is also presented. The viability of the approach has been demonstrated in a real setup where the robot is fully autonomous. Experiments indicate that the proposed method enables the robot to actively explore the objects faster than a standard next-best view algorithm.
机译:提出了一种新颖的策略来确定机器人臂的下一个最佳视图,配备有一个手中配置的深度相机,这导致了对未知物体的自主探索。选择下一个最佳视图,而不是最大化预期未知卷的总大小,而是选择下一个最佳视图来观察不完整对象的边框。通过应用点云分割算法,检测属于对象的突出区域,而没有任何先验知识。该系统使用Kinect V2传感器,该传感器在以前的工作中尚未考虑下一个最佳视图规划,并且它利用KinectFusion来维持环境的体积表示。还呈现了减少Kinect V2无效点的低级过程。该方法的可行性已在机器人完全自主的真实设置中进行了证明。实验表明,该方法使机器人能够以标准的下一个最佳视图算法更快地主动探索物体。

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