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Improving in vivo plant nitrogen content estimates from digital images: Trueness and precision of a new approach as compared to other methods and commercial devices

机译:通过数字图像改善体内植物氮含量的估算:与其他方法和商业设备相比,新方法的真实性和精确性

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Operational tools to support nitrogen (N) management in cropping systems are increasingly needed to maximise profit, minimise environmental impact, and to cope with market requirements. In this study, a new method (18%-grey DGCI) for estimating leaf and plant N content from digital photography was evaluated and compared with others based on image processing (DGCI and Corrected DGCI) and with commercial tools (leaf colour chart, SPAD-502, and Dualex 4). All methods were evaluated for rice using data collected in northern Italy in 2013, by adapting the ISO 5725-2 validation protocol. 18%-grey DGCI was further validated on independent data collected in 2014. Dualex achieved the best performances for trueness (R-2 = 0.96 and 0.92 for leaf and plant N contents), although it presented partly unsatisfying values for precision (12.33% for repeatability and 14.81% for reproducibility). SPAD, instead, demonstrated the highest precision (repeatability = 4.51%, reproducibility = 4.98%), even if it was ranked third for trueness (R-2 = 0.82 and 0.81 for leaf and plant N contents). 18%-grey DGCI was ranked second for trueness (R-2 = 0.83 for both leaf and plant N contents) and third for precision (11.11% and 14.47% for repeatability and reproducibility). The good performances of the new method were confirmed during the 2014 experiment (R-2 = 0.87 for leaf N content). The 18%-grey DGCI method has been implemented in a smartphone app (PocketN) to provide farmers and technicians with a low-cost diagnostic tool for supporting N management at field level in contexts characterised by low availability of resources. (C) 2015 IAgrE. Published by Elsevier Ltd. All rights reserved.
机译:为了使利润最大化,对环境的影响最小以及满足市场需求,越来越需要支持作物系统中氮(N)管理的操作工具。在这项研究中,评估了一种新的方法(18%灰色DGCI),该方法用于估计数字摄影中的叶片和植物N含量,并与其他基于图像处理(DGCI和Corrected DGCI)和商业工具(叶色图,SPAD)的氮进行比较-502和Dualex 4)。通过采用ISO 5725-2验证协议,使用2013年意大利北部收集的数据对所有方法的稻米进行了评估。 18%的灰色DGCI在2014年收集的独立数据上得到了进一步验证。Dualex的真实性表现最佳(叶片和植物N含量的R-2 = 0.96和0.92),尽管其精确度部分不令人满意(对于D2而言为12.33%)。重复性和14.81%的可重复性)。相反,SPAD表现出最高的精度(重复性= 4.51%,再现性= 4.98%),即使它的真实性排名第三(叶片和植物N含量的R-2 = 0.82和0.81)。 18%灰色DGCI的真实性排名第二(叶片和植物N含量的R-2 = 0.83),而精确度排名第三(重复性和再现性分别为11.11%和14.47%)。在2014年的实验中证实了新方法的良好性能(叶片N含量R-2 = 0.87)。 18%灰色的DGCI方法已在智能手机应用程序(PocketN)中实现,可为农民和技术人员提供低成本的诊断工具,以在资源匮乏的情况下支持实地水平的氮素管理。 (C)2015年。由Elsevier Ltd.出版。保留所有权利。

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