A Ground-based Platform for Reliable Estimates of Fruit Number, Size, and Color in Stone Fruit Orchards

IF 1 4区 农林科学 Q3 HORTICULTURE
Muhammad Islam, Alessio Scalisi, M. O'Connell, P. Morton, Steve Scheding, J. Underwood, I. Goodwin
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引用次数: 6

Abstract

Automatic in-field fruit recognition techniques can be used to estimate fruit number, fruit size, fruit skin color, and yield in fruit crops. Fruit color and size represent two of the most important fruit quality parameters in stone fruit (Prunus sp.). This study aimed to evaluate the reliability of a commercial mobile platform, sensors, and artificial intelligence software system for fast estimates of fruit number, fruit size, and fruit skin color in peach (Prunus persica), nectarine (P. persica var. nucipersica), plum (Prunus salicina), and apricot (Prunus armeniaca), and to assess their spatial and temporal variability. An initial calibration was needed to obtain estimates of absolute fruit number per tree and a forecasted yield. However, the technology can also be used to produce fast relative density maps in stone fruit orchards. Fruit number prediction accuracy was ≥90% in all the crops and training systems under study. Overall, predictions of fruit number in two-dimensional training systems were slightly more accurate. Estimates of fruit diameter (FD) and color did not need an initial calibration. The FD predictions had percent standard errors <10% and root mean square error <5 mm under different training systems, row spacing, crops, and fruit position within the canopy. Hue angle, a color attribute previously associated with fruit maturity in peach and nectarine, was the color attribute that was best predicted by the mobile platform. A new color parameter—color development index (CDI), ranging from 0 to 1—was derived from hue angle. The adoption of CDI, which represents the color progression or distance from green, improved the interpretation of color measurements by end-users as opposed to hue angle and generated more robust color estimations in fruit that turn purple when ripe, such as dark plum. Spatial maps of fruit number, FD, and CDI obtained with the mobile platform can be used to inform orchard decisions such as thinning, pruning, spraying, and harvest timing. The importance and application of crop yield and fruit quality real-time assessments and forecasts are discussed.
一个用于可靠估计石果果园果实数量、大小和颜色的地面平台
自动田间水果识别技术可用于估计水果作物的果实数量、果实大小、果皮颜色和产量。果实颜色和大小是核果(Prunus sp.)中两个最重要的果实质量参数。本研究旨在评估商业移动平台、传感器和人工智能软件系统的可靠性,以快速估计桃(Prunuspersica)、油桃(P.persica var.nucipersica),李(Prunus salicina)和杏(Pruns armeniaca),并评估它们的空间和时间变异性。需要进行初步校准,以获得每棵树的绝对果实数和预测产量的估计值。然而,这项技术也可以用于在核果园中制作快速的相对密度图。在所研究的所有作物和训练系统中,果实数量预测准确率≥90%。总体而言,在二维训练系统中对果实数量的预测略为准确。果实直径(FD)和颜色的估计不需要初始校准。在不同的训练系统、行距、作物和冠层内果实位置下,FD预测的标准误差百分比<10%,均方根误差<5mm。色调角是一种以前与桃和油桃果实成熟度相关的颜色属性,是移动平台最能预测的颜色属性。从色调角度推导出一个新的颜色参数——显色指数(CDI),范围从0到1。CDI表示颜色进展或与绿色的距离,它的采用改进了最终用户对颜色测量的解释,而不是色调角度,并在成熟时变紫的水果(如李子)中产生了更稳健的颜色估计。使用移动平台获得的果实数量、FD和CDI的空间图可用于为果园决策提供信息,如疏伐、修剪、喷洒和收获时间。讨论了作物产量和果实质量实时评估与预测的重要性及其应用。
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来源期刊
Horttechnology
Horttechnology 农林科学-园艺
CiteScore
2.30
自引率
10.00%
发文量
67
审稿时长
3 months
期刊介绍: HortTechnology serves as the primary outreach publication of the American Society for Horticultural Science. Its mission is to provide science-based information to professional horticulturists, practitioners, and educators; promote and encourage an interchange of ideas among scientists, educators, and professionals working in horticulture; and provide an opportunity for peer review of practical horticultural information.
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