基于无人机多光谱遥感和机器学习的棉花SPAD值预测

Prediction of SPAD value of cotton based on UAV multispectral remote sensing and machine learning

  • 摘要: 【目的】 通过无人机多光谱影像和机器学习算法估测棉花SPAD值,快速准确的获取棉花叶绿素含量(SPAD值),为精准监测棉花生长状态、提高棉花产量和品质预测提供参考。 【方法】 利用多光谱遥感技术结合机器学习方法,反演新疆阿克苏地区棉花SPAD值。采用裂区试验设计,选择3个施氮水平和3个灌溉定额,分析不同水氮处理下棉花SPAD值的响应规律,研究不同时期棉花多光谱影像的光谱特征并构建植被指数,分析植被指数与SPAD值的相关性,筛选出相关性高的植被指数。通过4种机器学习算法对试验1和试验2全生育期SPAD值数据和多光谱指数进行建模分析,筛选出最优监测模型,分别预测反演不同时期棉花SPAD值,用不同田块数据验证模型。 【结果】 棉花不同生长期受到灌水和施肥条件影响显著。筛选合适的光谱指数并用随机森林模型建模取得了较好的估测精度,在花铃期模型估测结果最佳,模型的估测进度R2介于0.68~0.73。RF模型在不同田块间进行叶片SPAD值估算具有较优的稳定性。 【结论】 基于无人机多光谱影像计算光谱指数采用RF算法建模估测棉花叶片SPAD值具有较优的精度和稳定性。

     

    Abstract: 【Objective】 Cotton is an important economic crop in Xinjiang, so obtaining cotton chlorophyll content (SPAD value) quickly and accurately on the field scale is of great significance for accurate monitoring of cotton growth status and improving cotton yield and quality prediction. In this study, multi-spectral remote sensing technology combined with machine learning method was used to retrieve the SPAD value of cotton in Aksu area.A feasible method for large area estimation of SPAD value of cotton in the field, and provides an important reference for non-destructive and real-time monitoring of crop growth index. 【Methods】 The split zone design was used in the experiment, three nitrogen application levels and three irrigation quotas were selected. Firstly, the response law of SPAD value of cotton under different water and nitrogen treatments was analyzed. Then the spectral characteristics of cotton multispectral images in different periods were further analyzed and the vegetation index was constructed. The correlation between vegetation index and SPAD value was analyzed, and the vegetation index with high correlation was selected. Four machine learning algorithms were used to model and analyze the SPAD value and multi-spectral index of the whole growth period of experiment 1 and experiment 2, and the optimal monitoring model was selected. The SPAD value of cotton in different periods were predicted and inversed, and the model was verified by different field data. 【Results】 The SPAD value of cotton was estimated by UAV multispectral images and machine learning algorithm, and it was found that different growth periods were significantly affected by irrigation and fertilization conditions. The better estimation accuracy was obtained by screening the appropriate spectral index and modeling with the random forest model, and the estimation result of the model was the best at the flowering and boll stage, and the estimation progress R2 of the model was between 0.68 and 0.73. The RF model had good stability in estimating the SPAD value of leaves among different fields. 【Conclusion】 The estimation of SPAD value of cotton leaves by RF algorithm based on UAV multispectral image calculation has good accuracy and stability.

     

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