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On-the-Go Grapevine Yield Estimation Using Image Analysis and Boolean Model

机译:使用图像分析和布尔模型的Go-Go葡萄原产量估计

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摘要

This paper describes a new methodology for noninvasive, objective, and automated assessment of yield in vineyards using image analysis and Boolean model. Image analysis, as an inexpensive and noninvasive procedure, has been studied for this purpose, but the effect of occlusions from the cluster or other organs of the vine has an impact that diminishes the quality of the results. To reduce the influence of the occlusions in the estimation, the number of berries was assessed using the Boolean model. To evaluate the methodology, three different datasets were studied: cluster images, manually acquired vine images, and vine images captured on-the-go using a quad. The proposed algorithm estimated the number of berries in cluster images with a root mean square error (RMSE) of 20 and a coefficient of determination (R-2) of 0.80. Vine images manually taken were evaluated, providing 310 grams of mean error and R2=0.81. Finally, images captured using a quad equipped with artificial light and automatic camera triggering were also analysed. The estimation obtained applying the Boolean model had 610 grams of mean error per segment (three vines) and R2=0.78. The reliability against occlusions and segmentation errors of the Boolean model makes it ideal for vineyard yield estimation. Its application greatly improved the results when compared to a simpler estimator based on the relationship between cluster area and weight.
机译:本文介绍了使用图像分析和布尔模型的葡萄园中的非侵入性,目标和自动评估的新方法。为此目的研究了图像分析,作为廉价和非侵入性的程序,但胶凝从群体或葡萄树的其他器官的效果产生了影响,这会减少结果的质量。为了减少闭塞在估计中的影响,使用布尔模型评估浆果的数量。为了评估方法,研究了三个不同的数据集:使用四边形捕获的群集图像,手动获取的藤图像和vine图像。所提出的算法估计簇图像中的浆果数量,具有20的根均方误差(RMSE)和0.80的确定系数(R-2)。评估手动拍摄的藤图像,提供310克平均误差,R2 = 0.81。最后,还分析了使用配备有人造光和自动摄像机触发的四边形捕获的图像。获得布尔模型的估计数为每段610克平均误差(三个藤),R2 = 0.78。对布尔模型的遮挡和分割误差的可靠性使其成为葡萄园收益率估计的理想选择。与基于集群区域与重量之间的关系相比,其应用程序大大提高了结果。

著录项

  • 来源
    《Journal of Sensors》 |2018年第5期|共14页
  • 作者单位

    Univ La Rioja CSIC Inst Ciencias Vid &

    Vino Gobierno La Rioja Logrono 26007 La Rioja Spain;

    PSL Res Univ CMM MINES ParisTech F-77300 Fontainebleau France;

    Univ La Rioja CSIC Inst Ciencias Vid &

    Vino Gobierno La Rioja Logrono 26007 La Rioja Spain;

    Univ La Rioja CSIC Inst Ciencias Vid &

    Vino Gobierno La Rioja Logrono 26007 La Rioja Spain;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 TP212;
  • 关键词

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