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基于特征光谱参数的苹果叶片叶绿素含量估算

冯海宽 杨福芹 杨贵军 李振海 裴浩杰 邢会敏

农业工程学报2018,Vol.34Issue(6):182-188,7.
农业工程学报2018,Vol.34Issue(6):182-188,7.DOI:10.11975/j.issn.1002-6819.2018.06.023

基于特征光谱参数的苹果叶片叶绿素含量估算

Estimation of chlorophyll content in apple leaves base on spectral feature parameters

冯海宽 1杨福芹 2杨贵军 3李振海 4裴浩杰 1邢会敏2

作者信息

  • 1. 北京农业信息技术研究中心,北京 100097
  • 2. 国家农业信息化工程技术研究中心,北京 100097
  • 3. 农业部农业信息技术重点实验室,北京 100097
  • 4. 北京市农业物联网工程技术研究中心,北京 100097
  • 折叠

摘要

Abstract

Chlorophyll content is an important parameter for evaluating the growth status using spectral reflectance feature. The rapid, non-destructive and accurate monitoring of chlorophyll content using hyperspectral reflectance has become an important research content for monitoring the growth of fruit trees. The object of this study was to analyze the relevance of chlorophyll content and the original spectrum of apple leaves and its transformation forms and to select optimum spectral parameters. Chlorophyll content model was built and verified by random forest (RF), partial least square (PLS), back propagation (BP) neural network and support vector machine (SVM). Parameters of samples including spectral reflectance of leaves and the concurrent apple leaves chlorophyll content were acquired in Tai'an, Shandong, China during apple growth seasons in 2012 and 2013. The result showed: 1) The optimum spectral parameters between chlorophyll content and the original spectrum reflectance (R) of apple leaves were 554 and 708 nm, and the correlation coefficients of that were ?0.46 and?0.66 respectively. The optimum spectral parameters between the chlorophyll content and the logarithm of reciprocal of spectra of apple leaves were 554 and 708 nm, and the correlation coefficients of that were 0.46 and 0.66 respectively. The optimum spectral parameters between chlorophyll content and the first order differential (D) reflectance spectra of apple leaves were 535 (trough), 569 (peak), 700 (trough) and 749 nm (peak), and the correlation coefficients of that were ?0.66, 0.64, ?0.69 and 0.76 respectively. The optimum spectral parameters between chlorophyll content and the continuum removal (CR) reflectance spectra of apple leaves were 557 (trough) and 708 nm (trough), and the correlation coefficients of that were ?0.35 and ?0.73, respectively. 2) The out-of-bag importance between chlorophyll content and reflectance spectra was analyzed using out-of-bag data of RF, the size order of out-of-bag data was D749 > CR708 > D569 > D700>D535 > CR557 > log(1/708) >log(1/554) > R554 > R708, the maximum and minimum were D749 and R708, respectively, and the corresponding values were 166.28 and 7.34, respectively. Based on out-of-bag data analysis, the D749, CR708, D569, D700 and D535 were chosen to build chlorophyll content estimation model using RF, PLS, BP, and SVM. The result showed that the R2, RMSE (root mean square error) and RE (relative error) were 0.94, 0.34 mg/dm2and 0.08% respectively for RF-estimation model; the R2, RMSE and RE were 0.61, 0.78 mg/dm2and 0 respectively for PLS-estimation model; the R2, RMSE and RE were 0.66, 0.75 mg/dm2 and 0.25% respectively according to BP-estimation model; the R2, RMSE and RE were 0.60, 0.81 mg/dm2and 0.70% respectively according to SVM-estimation model. The accuracies of RF, PLS, BP and SVM validation model were compared. The R2of RF, PLS, BP and SVM model was 0.86, 0.91, 0.60 and 0.66, respectively; the RMSE of RF, PLS, BP and SVM model was 0.79, 0.75, 1.18 and 1.20 mg/dm2, respectively; the RE of RF, PLS, BP and SVM model was 1.31%, 6.68%, 3.19% and 0.46%, respectively. The study showed that the accuracy of RF estimation model is much higher than PLS, BP and SVM. The stability of the RF validation model is also higher than that of the PLS and BP validation model, which is close to the PLS regression. Overall, the RF algorithm has better performance than PLS, BP and SVM algorithm. Therefore, using hyperspectral technology with RF algorithm can estimate apple leaf chlorophyll content more rapidly and accurately and provide a theoretical basis for rapid nutrition diagnosis and growth monitoring.

关键词

叶绿素/光谱分析/支持向量机/苹果叶片/高光谱/随机森林/偏最小二乘法/BP神经网络

Key words

chlorophyll/spetrum analysis/support vector machines/apple leaves/hyperspectral/random forest/partial least squares/BP neural network

分类

农业科技

引用本文复制引用

冯海宽,杨福芹,杨贵军,李振海,裴浩杰,邢会敏..基于特征光谱参数的苹果叶片叶绿素含量估算[J].农业工程学报,2018,34(6):182-188,7.

基金项目

国家自然科学基金(41601346) (41601346)

北京市自然科学基金项目(4141001) (4141001)

国家高技术研究发展计划863课题(2011AA100703) (2011AA100703)

农业工程学报

OA北大核心CSCDCSTPCD

1002-6819

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