Estimation of Apple Leaf Nitrogen Concentration Using Hyperspectral Imaging-Based Wavelength Selection and Machine Learning

IF 3.1 3区 农林科学 Q1 HORTICULTURE
Sihyeong Jang, Jeomhwa Han, Junggun Cho, Jaehoon Jung, Seulki Lee, Dongyong Lee, Jingook Kim
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Abstract

In apple cultivation, the total nitrogen content is an important indicator of plant growth, fruit quality, and yield. Timely monitoring of growth becomes imperative, since an imbalance, either in deficiency or excess nitrogen, can result in physiological disorders, adversely impacting both the quantity and quality of fruit. Leaf nitrogen content can be determined using simple chlorophyll meters or destructive testing; however, these methods are time-consuming. However, by employing spectral imaging technology, it is possible to swiftly predict leaf nitrogen content. This study estimated the total nitrogen content in apple trees via hyperspectral imaging and machine learning-based regression analysis (partial least-squares regression (PLSR), support vector regression (SVR), and eXtreme gradient boosting regression (XGBoost). Additionally, to reduce computational costs and improve reproducibility, spectral binning was divided into three stages (4, 8, and 16 bins), and models were compared with a 2-binning estimation model. The analysis focused on green, red, red edge, and near-infrared (NIR) spectra, with 5–10 selected wavelengths, and the SVR-based prediction model showed a similar or greater performance to that of the full spectrum. At 4- and 8-binning, the selected wavelengths were similar to those at 2-binning, maintaining similar prediction model performance. However, at 16 bp, the performance of the prediction model decreased owing to spectral data loss, leading to a significant reduction in wavelengths for nitrogen content estimation. These results can support informed nitrogen fertilization decisions, enabling precise, real-time monitoring of nitrogen content for enhanced plant growth, fruit quality, and yield in apple trees. Additionally, the selected wavelengths can be considered in the development of new types of multispectral sensors.
利用基于高光谱成像的波长选择和机器学习估算苹果叶片氮浓度
在苹果栽培中,总氮含量是植物生长、果实质量和产量的重要指标。由于缺氮或过氮都会导致生理失调,对果实的数量和质量产生不利影响,因此必须及时监测生长情况。叶片含氮量可通过简单的叶绿素测量仪或破坏性测试来确定,但这些方法都很耗时。不过,利用光谱成像技术,可以迅速预测叶片氮含量。本研究通过高光谱成像和基于机器学习的回归分析(偏最小二乘回归(PLSR)、支持向量回归(SVR)和极端梯度提升回归(XGBoost))估算苹果树的总氮含量。此外,为了降低计算成本和提高可重复性,光谱分选分为三个阶段(4、8 和 16 个分选),并将模型与 2 分选估计模型进行了比较。分析的重点是绿光、红光、红边光和近红外光谱,选取了 5-10 个波长,基于 SVR 的预测模型显示出与全光谱相似或更高的性能。在 4 和 8 分选时,所选波长与 2 分选时的波长相似,预测模型的性能也相似。然而,在 16 bp 时,由于光谱数据丢失,预测模型的性能下降,导致用于氮含量估算的波长大幅减少。这些结果有助于做出明智的氮肥施用决策,实现对氮含量的精确、实时监测,从而提高苹果树的植株生长、果实质量和产量。此外,在开发新型多光谱传感器时也可考虑所选波长。
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来源期刊
Horticulturae
Horticulturae HORTICULTURE-
CiteScore
3.50
自引率
19.40%
发文量
998
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