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Generation of High-Density Hyperspectral Point Clouds of Crops with Robotic Multi-Camera Planning

机译:机器人多摄像机规划技术在作物高密度高光谱点云生成

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Hyperspectral imaging and point-cloud based mapping of horticultural crops provide crucial information for precision agriculture applications. In this paper, we present an optimal method of autonomously generating high-density hyperspectral point clouds of objects using a robotic multi-camera suite, without the need for high-cost, large-size hyperspectral cameras. The sensing and imaging fusion are integrated through the use of next-best-view planning for a heterogeneous set of cameras, and a novel information gain metric designed specifically for hyperspectral point clouds. We also introduce a tractable approximation to the IG metric for real-time applications. Both metrics are tested on plant scans with augmented spectral data to demonstrate the capabilities and accuracy of the method.
机译:园艺作物的高光谱成像和基于点云的制图为精确农业应用提供了关键信息。在本文中,我们提出了使用机器人多相机套件自主生成高密度高光谱点云的最佳方法,而无需使用昂贵的大型高光谱相机。通过使用针对异类摄像机的最佳视图计划和专门为高光谱点云设计的新颖信息增益度量,将感测和成像融合集成在一起。对于实时应用,我们还为IG指标引入了易于处理的近似值。两种指标均在带有增强光谱数据的工厂扫描中进行测试,以证明该方法的功能和准确性。

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