陈鹏, 冯海宽, 李长春, 杨贵军, 杨钧森, 杨文攀, 刘帅兵. 无人机影像光谱和纹理融合信息估算马铃薯叶片叶绿素含量[J]. 农业工程学报, 2019, 35(11): 63-74. DOI: 10.11975/j.issn.1002-6819.2019.11.008
    引用本文: 陈鹏, 冯海宽, 李长春, 杨贵军, 杨钧森, 杨文攀, 刘帅兵. 无人机影像光谱和纹理融合信息估算马铃薯叶片叶绿素含量[J]. 农业工程学报, 2019, 35(11): 63-74. DOI: 10.11975/j.issn.1002-6819.2019.11.008
    Chen Peng, Feng Haikuan, Li Changchun, Yang Guijun, Yang Junsen, Yang Wenpan, Liu Shuaibing. Estimation of chlorophyll content in potato using fusion of texture and spectral features derived from UAV multispectral image[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2019, 35(11): 63-74. DOI: 10.11975/j.issn.1002-6819.2019.11.008
    Citation: Chen Peng, Feng Haikuan, Li Changchun, Yang Guijun, Yang Junsen, Yang Wenpan, Liu Shuaibing. Estimation of chlorophyll content in potato using fusion of texture and spectral features derived from UAV multispectral image[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2019, 35(11): 63-74. DOI: 10.11975/j.issn.1002-6819.2019.11.008

    无人机影像光谱和纹理融合信息估算马铃薯叶片叶绿素含量

    Estimation of chlorophyll content in potato using fusion of texture and spectral features derived from UAV multispectral image

    • 摘要: 利用无人机平台搭载多光谱传感器在农业监测上已经有一些应用,但是利用无人机多光谱影像估算作物叶绿素含量的研究较少,特别是融合无人机多光谱影像光谱信息和纹理信息估算马铃薯叶绿素含量的研究更是罕见。基于此,该文利用2018年北京小汤山基地马铃薯各个典型生育期的无人机多光谱影像及实测的叶绿素含量数据,首先提取多光谱影像植被指数和纹理特征等变量,然后分析其与叶绿素含量相关性,筛选出较优特征变量,并开展基于调整R2和K折交叉验证的全子集分析估算马铃薯叶绿素含量。最后将植被指数与纹理特征通过主成分融合构建一种新的综合指标估算叶绿素含量。研究发现:1)多光谱植被指数和纹理特征估算叶绿素含量模型,K折交叉验证均优于调整R2;2)整个生育期,综合指标模型决定系数比植被指数模型、纹理特征模型均有提升,且标准均方根误差均降低。综合指标估算模型较优,多光谱植被指数模型次之,纹理特征模型较差。该研究可为马铃薯生长营养监测提供一种可行的方法,对马铃薯的栽培种植管理具有指导意义。

       

      Abstract: Chlorophyll is an important pigment for crop light energy utilization, which directly affects the process of energy material conversion and transmission. The change of chlorophyll content directly reflects the ability of photosynthesis and the nutritional status of crop growth. When the traditional unmanned aerial vehicle (UAV) remote sensing was used for crop nutrition monitoring, most of them started from the spectral vegetation indices, ignoring the characteristics of the image itself. In this study, we estimated potato leaf chlorophyll content from a comprehensive index formed by the fusion of multi-spectral vegetation indices, texture features and comprehensive indicators of data fusion. The effect of comprehensive index model on estimating potato leaf chlorophyll content was explored. First, we used the UAV multi-spectral images during the whole potato growth period in 2018 in Xiaotangshan, Changping, and Beijing. The multi-spectral vegetation index, texture characteristics and other variables were first extracted from UVA images, then their correlation relationships with leaf chlorophyll content were analyzed. The optimal image variables were screened out, and the whole subset analysis was based on adjusted determination coefficient and 10-fold cross-validation was used to estimate the leaf chlorophyll content of potato. Finally, the vegetation index and texture features were reconstructed by principal component fusion to establish a new comprehensive index for chlorophyll content estimation. It was found that the leaf chlorophyll content estimation model based on comprehensive index was better than that based on multi-spectral vegetation indices and texture features. The main reason was that the comprehensive index contained both spectral information and image texture information. Multispectral information and model accuracy had also been significantly improved. In the bud period, compared with the vegetation indices based model and the texture feature based model, the determination coefficient (R2) of the comprehensive index model increased 0.104 and 0.136, while the normalized root mean squared error (NRMSE) reduced 1.3 percentage point and 1.6 percentage point. During the tuber formation period, the determination coefficient of comprehensive index model was increased 0.04.and 0.101, while the NRMSE was decreased 0.5 percentage point and 1.2 percentage point, compared with the other 2 models. In the tuber growth period, the determination coefficient of comprehensive index model increased 0.075 and 0.111, and the NRMSE decreased 0.9 percentage point and 1.3 percentage point compared with the vegetation index model and the texture feature model. During the starch accumulation period, the R2 of comprehensive index model increased 0.017 and 0.046, and the NRMSE decreased 0.2 percentage point and 0.6 percentage point, compared with vegetation index model and texture feature model. In the maturity period, the determination coefficient of comprehensive index model increased 0.088 and 0.057, and the NRMSE decreased 2.3 percentage point and 1.5 percentage point. Therefore, the effect of comprehensive index estimation model was the best followed by multi-spectral vegetation indices model and the texture feature model was the worst. The starch accumulation period was the best growth period for estimating chlorophyll content by multispectral vegetation index and texture characteristics, while bud period was the best growth period for estimating chlorophyll content by comprehensive index. Estimating potato chlorophyll content based on multi-spectral image from UAV platform can provide a feasible method for potato growth nutrition monitoring. It realizes low-cost, fast and high-throughput monitoring of potato growth and nutrition information, as well as provides guarantee for fine management of farmland irrigation, variable fertilization and so on.

       

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