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Image-based tree pruning

机译:基于图像的树修剪

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摘要

There is an increasing awareness and development of agricultural robots to take the toil of farming by automating growing plants and trees. Pruning is an expensive and labor intensive step in growing trees, that greatly affects its productivity. Moreover, pruning requires knowledge about what, where and how to cut. To partially solve the limitations of manual pruning methods, this paper presents an automatic image-based pruning system. Our system uses a high-resolution and a Kinect camera mounted on a mobile robot to capture the 3D structure of trees in the field. The robot goes around a tree and synchronously captures high-resolution and depth images. The visual and depth information across images is fused to estimate a 3D “stick” representation of the tree. The output of our system suggests the operator which branches to cut based on pre-existing rules. Several challenges contribute to the difficulty of image-based pruning: (1) fusing spatial and temporal information in depth images, (2) capture and segment small branches, (3) quantitative estimation of the angles and length for each branch. The number of suggested branches to cut in several trees have high agreement with the ones suggested by an expert, that illustrates the validity of our approach.
机译:通过使植物和树木自动化来承担农业劳动的农业机器人的意识和发展正在提高。修剪是树木生长中的一项昂贵且劳动密集的步骤,这极大地影响了其生产力。此外,修剪需要有关什么,在何处以及如何切割的知识。为了部分解决手动修剪方法的局限性,本文提出了一种基于图像的自动修剪系统。我们的系统使用高分辨率和安装在移动机器人上的Kinect摄像机来捕获野外树木的3D结构。机器人绕着树走,并同步捕获高分辨率和深度的图像。融合图像上的视觉和深度信息,以估计树的3D“棒”表示。我们系统的输出建议操作员根据现有规则进行切割。几个挑战加剧了基于图像的修剪的难度:(1)在深度图像中融合空间和时间信息;(2)捕获和分割小分支;(3)定量估计每个分支的角度和长度。建议切开几棵树的分支数量与专家建议的数量高度吻合,这说明了我们方法的有效性。

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