首页> 外文会议>2013 6th IEEE Conference on Robotics, Automation and Mechatronics >Post identification and location derivation in vineyards through point clouds using cylinder extraction and density clustering
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Post identification and location derivation in vineyards through point clouds using cylinder extraction and density clustering

机译:使用圆柱提取和密度聚类通过点云在葡萄园中进行后期识别和位置推导

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摘要

An automatic pruning machine is desirable due to the limitations and drawbacks of current grapevine pruning methods. It mitigates the issue of skilled worker shortages and reduces overall labour cost. To achieve autonomous grapevine pruning accurately and effectively, it is crucial to identify and locate posts, cordons and canes, which are the main objects for automatic pruning operations. In this paper, a new method is proposed to automatically identify the post and derive its location using point clouds. This method adopted the advantages of cylinder extraction and density clustering, and combined the features of cylinder and density for identification purposes. The results of applying this method to different data sets in vineyards are presented and its effectiveness is illustrated.
机译:由于当前的葡萄树修剪方法的局限性和缺点,因此需要一种自动修剪机。它减轻了技术工人短缺的问题,并降低了整体劳动力成本。为了准确,有效地实现葡萄树的自动修剪,识别并定位自动修剪操作的主要对象的支柱,警戒线和手杖至关重要。在本文中,提出了一种新的方法来自动识别职位,并使用点云导出其位置。该方法利用了圆柱提取和密度聚类的优点,并结合圆柱和密度特征进行识别。介绍了将该方法应用于葡萄园中不同数据集的结果,并说明了其有效性。

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