结合当地和全球视角规划水果覆盖

Tobias Zaenker, Christopher F. Lehnert, C. McCool, Maren Bennewitz
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引用次数: 13

摘要

由于完整植物或植物部分(如作物或水果)的结构复杂且遮挡程度高,因此获取它们的3D传感器数据非常困难。但是,特别是对于水果的位置和大小的估计,需要尽可能地避免遮挡,获取相关部位的传感器信息。全球视点规划者提出了一系列视点,以覆盖感兴趣的区域达到一定程度,但他们通常优先考虑全球覆盖,而不强调避免局部遮挡。另一方面,有一些方法旨在避免局部遮挡,但它们不能在更大的环境中使用,因为它们只能达到局部最大覆盖范围。因此,在本文中,我们提出将基于局部梯度的方法与全局视点规划相结合,以避免局部遮挡,同时仍然能够覆盖大面积。我们用装备有相机阵列和RGB-D相机的机械臂进行的模拟实验表明,与仅应用全球覆盖规划相比,这种组合可以显著增加感兴趣区域的覆盖范围。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining Local and Global Viewpoint Planning for Fruit Coverage
Obtaining 3D sensor data of complete plants or plant parts (e.g., the crop or fruit) is difficult due to their complex structure and a high degree of occlusion. However, especially for the estimation of the position and size of fruits, it is necessary to avoid occlusions as much as possible and acquire sensor information of the relevant parts. Global viewpoint planners exist that suggest a series of viewpoints to cover the regions of interest up to a certain degree, but they usually prioritize global coverage and do not emphasize the avoidance of local occlusions. On the other hand, there are approaches that aim at avoiding local occlusions, but they cannot be used in larger environments since they only reach a local maximum of coverage. In this paper, we therefore propose to combine a local, gradient-based method with global viewpoint planning to enable local occlusion avoidance while still being able to cover large areas. Our simulated experiments with a robotic arm equipped with a camera array as well as an RGB-D camera show that this combination leads to a significantly increased coverage of the regions of interest compared to just applying global coverage planning.
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