果干配对与聚类在苹果机器人削枝中的应用

IF 4.2 2区 计算机科学 Q2 ROBOTICS
Magni Hussain, Long He, James Schupp, David Lyons, Paul Heinemann
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引用次数: 0

摘要

苹果是美国价值最高的特色作物之一。最近的劳动力短缺使水果种植者的作物生产变得困难,包括青果修剪的任务。目前的方法包括手工、化学和机械减薄,在选择性、成本、树木损伤和速度之间进行了权衡。一种机器人青果削薄系统可以以快速、经济、无害的方式选择性地削薄水果。机器视觉系统将是机器人削薄的关键组成部分,不仅需要进行青果检测/分割,还需要进行果干配对和聚类,以促进正确的削薄决策。设计了一种基于神经网络的果干配对算法,并对其进行了评价;设计了一种基于lstm的聚类算法,并与基于密度的OPTICS聚类算法进行了比较。在GoldRush、Fuji和Golden Delicious三个品种的青果期图像数据集上对算法进行了综合性能、品种性能、特定簇大小性能和特征重要性的评价。对于果实和茎的配对,基于神经网络的配对算法在所有果实和茎上的AP为81.4%,仅考虑带有标记角度的果实和茎时的AP为90.6%。对于青果聚类,基于lstm的聚类成功率为68.4%,而OPTICS算法的聚类成功率为50.9%。这些算法将在未来青果细化视觉系统的流水线中进一步实现,并整合点云和其他3D果园信息的使用,以提高配对和聚类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Green Fruit-Stem Pairing and Clustering for Machine Vision System in Robotic Thinning of Apples

Apples are one of the most highly-valued specialty crops in the United States. Recent labor shortages have made crop production difficult for fruit growers, including the task of green fruit thinning. Current methods including hand, chemical, and mechanical thinning impose tradeoffs between selectivity, cost, tree damage, and speed. A robotic green fruit thinning system could potentially selectively thin fruit in a quick, cost-effective, and non-damaging manner. The machine vision system would be a critical component for robotic thinning, and would not only need to perform green fruit detection/segmentation, but also fruit-stem pairing and clustering to facilitate proper decision-making for thinning. A neural network-based fruit and stem pairing algorithm was devised and evaluated; an LSTM-based clustering algorithm was devised and compared to the density-based clustering algorithm, OPTICS. The algorithms were evaluated on an image data set consisting of GoldRush, Fuji, and Golden Delicious cultivars at the green fruit stage, with evaluations on overall performance, cultivar-wise performance, cluster size-specific performance, and feature importance. For fruit and stem pairing, the neural network-based pairing algorithm achieved an AP of 81.4% on all fruits and stems, and that reached 90.6% when only fruits and stems with labeled angles were considered. For green fruit clustering, the LSTM-based clustering achieved a clustering success rate of 68.4%, whereas the OPTICS algorithm obtained 50.9%. The algorithms will be further implemented in a pipeline of a future green fruit thinning vision system, as well as integrate the use of point clouds and other 3D orchard information to improve pairing and clustering performance.

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来源期刊
Journal of Field Robotics
Journal of Field Robotics 工程技术-机器人学
CiteScore
15.00
自引率
3.60%
发文量
80
审稿时长
6 months
期刊介绍: The Journal of Field Robotics seeks to promote scholarly publications dealing with the fundamentals of robotics in unstructured and dynamic environments. The Journal focuses on experimental robotics and encourages publication of work that has both theoretical and practical significance.
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