姜友谊,刘博伟,张成健,等. 利用无人机多光谱影像的多品种玉米成熟度监测[J]. 农业工程学报,2023,39(20):84-91. DOI: 10.11975/j.issn.1002-6819.202305123
    引用本文: 姜友谊,刘博伟,张成健,等. 利用无人机多光谱影像的多品种玉米成熟度监测[J]. 农业工程学报,2023,39(20):84-91. DOI: 10.11975/j.issn.1002-6819.202305123
    JIANG Youyi, LIU Bowei, ZHANG Chengjian, et al. Multi-variety maize maturity monitoring based on UAV multi-spectral images[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2023, 39(20): 84-91. DOI: 10.11975/j.issn.1002-6819.202305123
    Citation: JIANG Youyi, LIU Bowei, ZHANG Chengjian, et al. Multi-variety maize maturity monitoring based on UAV multi-spectral images[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2023, 39(20): 84-91. DOI: 10.11975/j.issn.1002-6819.202305123

    利用无人机多光谱影像的多品种玉米成熟度监测

    Multi-variety maize maturity monitoring based on UAV multi-spectral images

    • 摘要: 基于遥感监测多品种玉米成熟度进而掌握最佳收获时机,对提高其产量和品质至关重要。该研究在玉米成熟阶段获取无人机多光谱影像,同步采集叶片叶绿素含量(chlorophyll content,C)、籽粒含水率(moisture content,M)、乳线占比(proportion of milk line,P)等地面实测数据,以此构建玉米成熟度指数(maize maturity index,MMI),从而定量表征玉米成熟度。通过MMI与植被指数构建回归模型和随机森林模型,验证MMI适用性,并分析无人机遥感对不同品种玉米成熟度的监测精度。结果表明:1)不同品种玉米的叶片叶绿素含量、籽粒含水率、乳线占比的变化速率均存在差异。2)MMI与所选植被指数的相关性均可达到0.01显著水平,其中与归一化植被指数(normalized difference vegetation index,NDVI)、转换叶绿素吸收率(transformed chlorophyll absorbtion ratio index,TCARI)相关性最高,相关系数均为0.87。3)该研究基于不同组合的数据集进行了模型验证,其中随机森林模型对MMI的估测精度最高,测试集决定系数(coefficient of determination,R2)为0.84,均方根误差(root mean squared error,RMSE)为8.77%,标准均方根误差(normalized root mean squared error,nRMSE)为12.05%。此外,随机森林模型对不同品种MMI的估测精度较好,京九青贮16精度最优,其R2RMSE、nRMSE为0.76、10.67%、15.88%,模型精度证明了可以利用无人机平台对不同品种玉米成熟度进行监测。研究结果可为多光谱无人机实时监测农田多品种玉米成熟度的动态变化提供参考。

       

      Abstract: Monitoring the maturity of multi-species maize based on remote sensing and thus mastering the optimal harvesting time is crucial for improving its yield and quality. The traditional method to monitor the maturity progress of maize is to use field surveys, and the disappearance of the kernel "milkline" is usually taken as a sign of maturity. However, the traditional field survey method is a labor-intensive activity that is not conducive to high-throughput field monitoring. Therefore, this study aims to construct a maize maturity index (MMI) to quantify the maturity of maize and monitor it through UAV multispectral monitoring, so as to grasp the dynamics of maize maturity stage in the field. Firstly, the UAV platform was used to acquire multispectral images at five time points of the maize maturity stage, and ground-based measured data such as the percentage of milkline, kernel water content and leaf chlorophyll content were collected accordingly. Secondly, based on the weighted analysis of the measured data, the MMI was constructed. Finally, based on the MMI and the vegetation index, a model was constructed using regression models and random forests to realize the UAV multispectral monitoring of corn maturity, and the effects of different varieties on MMI were analyzed. The results showed that: 1) for different varieties of maize at maturity stage, there were differences in the change patterns of leaf chlorophyll content and kernel water content, the leaf chlorophyll content and kernel water content of Zhengdan 958 and Jingjiuqingzhu16 were always higher than that of Jiyuan 1 and Jiyuan 168, while the rate of decline of leaf chlorophyll content and milkline percentage of two varieties of maize at maturity stage was lower than that of Jiyuan 1 and Jiyuan 168. 2) The correlations between MMI and selected vegetation indices in the experiment could reach 0.01 significant level, among which the correlations with normalized difference vegetation index (NDVI) and transformed chlorophyll absorbtion ratio index (TCARI) were highest with correlation coefficients above 0.87, in addition, the wide dynamic range vegetation index (WDRVI) has the most obvious changes, and the variance fluctuates less, which is similar to MMI. 3) The study was verified based on data sets of different combinations. Among them, the random forest model has the highest estimation accuracy of MMI. The test set coefficient of determination (R2) is 0.84, and the root mean squared error (RMSE) is 8.77%, and the normalized root mean squared error (nRMSE) is 12.05%. In the revalidation scheme 2-1, the RF model test set has high accuracy, in which R2 is 0.65, RMSE is 13.02%, nRMSE is 19.17%. In addition, the random forest model has better estimated accuracy of different varieties of MMI. The Jingjiuqingzhu 16 has the best accuracy. Among them, R2, RMSE, and nRMSE are 0.76, 10.67%, and 15.88%. The model accuracy proves that the drone platform can be monitored to monitor the maturity of different varieties of corn. The results of the research can provide a reference for the dynamic changes in multi-spectrum drones to monitor the dynamic changes in multi-variety of corn in farmland.

       

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