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Progress of hyperspectral data processing and modelling for cereal crop nitrogen monitoring

机译:谷物作物氮监测高光谱数据处理和建模的进展

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摘要

Nitrogen (N) is the most limiting nutrient for cereal crop production, which often results in over-application of N fertilization to maximize crop yield. Negative environmental impacts and long-term reductions in productivity has encouraged site-specific N fertilization approaches, but these require timely and accurate crop N monitoring. The advent of hyperspectral remote sensing potentially provides a fast and economic way to accomplish this. A framework for hyperspectral remote sensing of cereal crop N is introduced, based on a comprehensive literature survey, to help inform monitoring best practices. Existing and potential crop N status indicators are summarized, with some recommendations provided. Hyperspectral analysis techniques for extracting N-related features are also examined and categorized into spatial domain and frequency domain based methods. In-depth analyses are conducted regarding: (1) the inconsistency in selected wavebands by different band selection methods and (2) determination of optimal wavelet, scale and wavelength in continuous wavelet transformations. Characteristics and deployment of machine learning based regression methods are also presented for crop N monitoring. Further, existing strategies to alleviate the ill-posed problem in physical and hybrid methods are outlined with some examples. Finally, the strengths and weaknesses of crop N retrieval methods are summarized to improve the understanding of how these methods affect prediction quality. Existing limitations and future areas of research emphasize on the fusion of crop N-related features from different domain spaces and the improved combination of empirical and physical methods.
机译:氮气(N)是谷物作物产量最有限的营养素,这通常导致施肥的过度施加,以最大化作物产量。对生产率的负面环境影响和长期减少鼓励了特定于现场的抗施肥方法,但这些方法需要及时和准确的作物N监测。高光谱遥感的出现可能提供了一种快速和经济的方式来实现这一目标。基于全面的文献调查,介绍了谷物作物N的高光谱遥感框架,以帮助监控最佳实践。概述了现有和潜在的作物N状态指标,提供了一些建议。还检查了用于提取N相关特征的高光谱分析技术,并分类为空间域和基于频域的方法。关于:(1)通过不同的频带选择方法和(2)在连续小波变换中的最佳小波,刻度和波长的确定,所选波段的不一致性分析。还介绍了基于机器学习的回归方法的特征和部署,用于作物n监控。此外,有一些例子概述了缓解物理和混合方法中的不良问题的现有策略。最后,总结了作物N检索方法的优势和弱点,以改善这些方法如何影响预测质量的理解。现有的局限和未来的研究领域强调了来自不同领域空间的作物N相关特征的融合和改进的实证和物理方法的组合。

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