首页> 外文期刊>Oeno One >Vineyard pruning weight assessment by machine vision: towards an on-the-go measurement system
【24h】

Vineyard pruning weight assessment by machine vision: towards an on-the-go measurement system

机译:通过机器视觉对葡萄园修剪重量进行评估:朝着实时测量系统发展

获取原文
       

摘要

Aim : Pruning weight is an indicator of vegetative growth and vigour in grapevine. Traditionally, it is manually determined, which is time-consuming and labour-demanding. This study aims at providing a new, non-invasive and low-cost method for pruning weight estimation in commercial vineyards based on computer vision. Methods and results : The methodology relies on computer-based analysis of RGB images captured manually and on-the-go in a VSP Tempranillo vineyard. Firstly, the pruning weight estimation was evaluated using manually taken photographs using a controlled background. These images were analysed to generate a model of wood pruning weight estimation, resulting in a coefficient of determination (R~(2)) of 0.91 (p<0.001) and a root-mean-square error (RMSE) of 87.7 g. After this, a mobile sensor platform (modified ATV) was used to take vine images automatically and on-the-go without background. These RGB images were analysed using a fully automated computer vision algorithm, resulting in R~(2) = 0.75 (p<0.001) and RMSE = 147.9 g. Finally, the mobile sensor platform was also used to sample a commercial VSP vineyard to map the spatial variability of wood pruning weight, and hereafter vine vigour. Conclusions : The results showed that the developed computer vision methodology was able to estimate the vine pruning weight in commercial vineyards and to map the spatial variation of the pruning weight across a vineyard. Significance and impact of the study : The presented methodology may become a valuable tool for the wine industry for rapid assessment and mapping of vine vigour. This information can be used to support decision making on pruning, fertilization and canopy management.
机译:目的:修剪体重是葡萄中营养生长和活力的指标。传统上,它是手动确定的,这既费时又费力。这项研究旨在提供一种基于计算机视觉的,用于商业葡萄园修剪重量估算的新的,非侵入性的,低成本的方法。方法和结果:该方法依赖于对VSP Tempranillo葡萄园中手动和实时采集的RGB图像进行基于计算机的分析。首先,使用受控背景下的手动拍摄照片评估修剪重量估计值。分析这些图像以生成木材修剪重量估计模型,从而得出确定系数(R〜(2))为0.91(p <0.001)和均方根误差(RMSE)为87.7 g。此后,使用移动传感器平台(改进的ATV)自动并在没有背景的情况下连续拍摄藤蔓图像。使用全自动计算机视觉算法分析了这些RGB图像,得出R〜(2)= 0.75(p <0.001)和RMSE = 147.9 g。最终,移动传感器平台还被用于对一个商业VSP葡萄园进行采样,以绘制木材修剪重量的空间变异性,以及之后的葡萄树活力。结论:结果表明,开发的计算机视觉方法能够估算商业葡萄园中葡萄修剪的重量,并能绘制整个葡萄园修剪重量的空间变化。研究的意义和影响:提出的方法对于葡萄酒行业进行快速评估和绘制葡萄活力图可能会成为一种有价值的工具。此信息可用于支持修剪,施肥和林冠管理方面的决策。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号