论文标题
NBV-SC:基于水果映射和重建的形状完成的下一个最佳视图计划
NBV-SC: Next Best View Planning based on Shape Completion for Fruit Mapping and Reconstruction
论文作者
论文摘要
由于频率经常发生遮挡,并且水果的大小随时间变化,因此对水果制图和收获的积极感知是一项艰巨的任务。最先进的观点计划方法利用计算昂贵的射线铸造操作来找到旨在最大化信息增益并覆盖现场果实的良好观点。在本文中,我们提出了一种新颖的观点计划方法,该方法明确地使用有关预测的果实形状的信息来计算有针对性的观点,这些观点尚未观察到尚未观察到的水果部分。此外,我们制定了观点差异的概念,以减少采样空间,以更有效地选择有用的不同观点。我们使用配备RGB-D传感器的UR5E ARM进行的仿真实验提供了定量证明基于形状完成的迭代下一个最佳视图计划方法的功效。在与最先进的观点计划者的比较实验中,我们不仅在估计果实量的估计中,而且在重建方面都证明了进步,同时大大减少了计划时间。最后,我们显示了在商业温室中使用真正的机器人系统绘制甜辣椒植物的方法的生存能力。
Active perception for fruit mapping and harvesting is a difficult task since occlusions occur frequently and the location as well as size of fruits change over time. State-of-the-art viewpoint planning approaches utilize computationally expensive ray casting operations to find good viewpoints aiming at maximizing information gain and covering the fruits in the scene. In this paper, we present a novel viewpoint planning approach that explicitly uses information about the predicted fruit shapes to compute targeted viewpoints that observe as yet unobserved parts of the fruits. Furthermore, we formulate the concept of viewpoint dissimilarity to reduce the sampling space for more efficient selection of useful, dissimilar viewpoints. Our simulation experiments with a UR5e arm equipped with an RGB-D sensor provide a quantitative demonstration of the efficacy of our iterative next best view planning method based on shape completion. In comparative experiments with a state-of-the-art viewpoint planner, we demonstrate improvement not only in the estimation of the fruit sizes, but also in their reconstruction, while significantly reducing the planning time. Finally, we show the viability of our approach for mapping sweet peppers plants with a real robotic system in a commercial glasshouse.