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Non-Invasive Sensing of Nitrogen in Plant Using Digital Images and Machine Learning for Brassica Campestris ssp. Chinensis L.

机译:利用数字图像和机器学习技术对甘蓝型油菜进行非侵入式氮感测中华

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摘要

Monitoring plant nitrogen (N) in a timely way and accurately is critical for precision fertilization. The imaging technology based on visible light is relatively inexpensive and ubiquitous, and open-source analysis tools have proliferated. In this study, texture- and geometry-related phenotyping combined with color properties were investigated for their potential use in evaluating N in pakchoi (Brassica campestris ssp. chinensis L.). Potted pakchoi treated with four levels of N were cultivated in a greenhouse. Their top-view images were acquired using a camera at six growth stages. The corresponding plant N concentration was determined destructively. The quantitative relationships between the nitrogen nutrition index (NNI) and the image-based phenotyping features were established using the following algorithms: random forest (RF), support vector regression (SVR), and neural network (NN). The results showed the full model based on the color, texture, and geometry-related features outperforms the model based on only the color-related feature in predicting the NNI. The RF full model exhibited the most robust performance in both the seedling and harvest stages, reaching prediction accuracies of 0.823 and 0.943, respectively. The high prediction accuracy of the model allows for a low-cost, non-destructive monitoring of N in the field of precision crop management.
机译:及时准确地监测植物氮(N)对于精确施肥至关重要。基于可见光的成像技术相对便宜且普遍存在,并且开源分析工具已经激增。在这项研究中,研究了与纹理和几何相关的表型与颜色特性的结合,探讨了它们在评估小白菜(芥菜)中氮含量方面的潜在用途。在温室中种植了用四个水平的氮处理过的盆栽小菜。他们的顶视图图像是使用摄像头在六个生长阶段获得的。破坏性地确定相应的植物氮浓度。使用以下算法建立氮营养指数(NNI)与基于图像的表型特征之间的定量关系:随机森林(RF),支持向量回归(SVR)和神经网络(NN)。结果表明,在预测NNI方面,基于颜色,纹理和几何相关特征的完整模型优于仅基于颜色相关特征的模型。 RF完整模型在苗期和收获期均表现出最强劲的性能,分别达到0.823和0.943的预测精度。该模型的高预测精度允许在精准作物管理领域进行低成本,无损的N监测。

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