利用飞行时间成像确定芦笋矛的位置,用于机器人收割

Matthew Peebles, Shen Hin Lim, Mike Duke, Benjamin Mcguinness, Chi Kit Au
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摘要

目的 飞行时间(ToF)成像是一种用于作物识别的新兴技术,前景广阔。本文旨在介绍基于 ToF 成像点云识别和定位田间芦笋的定位系统。由于点云中不包含语义,因此除芦笋矛外,还包含其他物体(如石头和杂草)的几何信息。设计/方法论/方法基于卷积神经网络(CNN)的实时方法用于过滤 ToF 相机生成的点云,使后续处理方法能够在更小、信息更密集的数据集上运行,从而缩短处理时间。分割后的点云可以分成代表每个矛的点簇。通过开发几何滤波器来消除每个群组中的非长矛点,从而对每个长矛进行建模和定位。该定位系统已集成到机器人收割原型系统中。已进行了几次实地试验,结果令人满意。从点云中识别长矛是成功定位的关键。使用 ToF 成像技术进行农业机器人应用中的大多数作物定位都是在温室等受控环境中实现的。在定位过程中,目标作物和机器人系统都是静止的。针对芦笋定位提出的新方法已在室外农场进行了测试,并与机器人收割平台进行了集成。在杂乱无章的环境中,芦笋检测和定位在连续移动的机器人平台上实时完成。
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Localization of asparagus spears using time-of-flight imaging for robotic harvesting

Purpose

Time of flight (ToF) imaging is a promising emerging technology for the purposes of crop identification. This paper aim to presents localization system for identifying and localizing asparagus in the field based on point clouds from ToF imaging. Since the semantics are not included in the point cloud, it contains the geometric information of other objects such as stones and weeds other than asparagus spears. An approach is required for extracting the spear information so that a robotic system can be used for harvesting.

Design/methodology/approach

A real-time convolutional neural network (CNN)-based method is used for filtering the point cloud generated by a ToF camera, allowing subsequent processing methods to operate over smaller and more information-dense data sets, resulting in reduced processing time. The segmented point cloud can then be split into clusters of points representing each individual spear. Geometric filters are developed to eliminate the non-asparagus points in each cluster so that each spear can be modelled and localized. The spear information can then be used for harvesting decisions.

Findings

The localization system is integrated into a robotic harvesting prototype system. Several field trials have been conducted with satisfactory performance. The identification of a spear from the point cloud is the key to successful localization. Segmentation and clustering points into individual spears are two major failures for future improvements.

Originality/value

Most crop localizations in agricultural robotic applications using ToF imaging technology are implemented in a very controlled environment, such as a greenhouse. The target crop and the robotic system are stationary during the localization process. The novel proposed method for asparagus localization has been tested in outdoor farms and integrated with a robotic harvesting platform. Asparagus detection and localization are achieved in real time on a continuously moving robotic platform in a cluttered and unstructured environment.

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