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    袁莹, 王雪峰, 石蒙蒙, 王鹏, 陈星京. 融合多光谱频域特征的坡垒相对叶绿素含量预测[J]. 北京林业大学学报, 2023, 45(11): 42-52. DOI: 10.12171/j.1000-1522.20230113
    引用本文: 袁莹, 王雪峰, 石蒙蒙, 王鹏, 陈星京. 融合多光谱频域特征的坡垒相对叶绿素含量预测[J]. 北京林业大学学报, 2023, 45(11): 42-52. DOI: 10.12171/j.1000-1522.20230113
    Yuan Ying, Wang Xuefeng, Shi Mengmeng, Wang Peng, Chen Xingjing. Prediction of relative chlorophyll content in Hopea hainanensis based on multispectral frequency domain features[J]. Journal of Beijing Forestry University, 2023, 45(11): 42-52. DOI: 10.12171/j.1000-1522.20230113
    Citation: Yuan Ying, Wang Xuefeng, Shi Mengmeng, Wang Peng, Chen Xingjing. Prediction of relative chlorophyll content in Hopea hainanensis based on multispectral frequency domain features[J]. Journal of Beijing Forestry University, 2023, 45(11): 42-52. DOI: 10.12171/j.1000-1522.20230113

    融合多光谱频域特征的坡垒相对叶绿素含量预测

    Prediction of relative chlorophyll content in Hopea hainanensis based on multispectral frequency domain features

    • 摘要:
      目的 研究坡垒叶绿素含量的多光谱图像预测法,探讨融合多光谱频域特征预测叶绿素含量的可行性,为坡垒叶绿素含量的无损监测提供有效工具。
      方法 采用将植被指数与传统的阈值分割法相结合的方式,去除坡垒冠层多光谱图像的背景,以F1为分割精度评价指标,确定最适多光谱图像分割方法。对分割后的坡垒冠层多光谱图像,精准提取空域特征(植被指数与纹理特征),并引入3种频域特征,然后基于相关性分析和Lasso算法筛选图像特征,以便携式叶绿素仪测得的SPAD值作为相对叶绿素含量实测值,确定与坡垒SPAD值强相关的优选特征及合适的建模特征组合,结合偏最小二乘回归(PLSR)、随机森林(RF)和极限梯度提升(XGBoost)模型,分别建立多光谱空、频、融合特征模型并进行精度验证,确定适用于幼龄坡垒SPAD值预测的模型形式。
      结果 差值植被指数与Kapur阈值结合的分割方法获得了最高分割精度,评价指标F1达到0.917,为坡垒冠层多光谱图像的最适分割方法。多光谱图像空频域特征表现了与坡垒SPAD值的显著相关性,其中相关性最强的特征为修正叶绿素吸收反射率植被指数,相关系数达到−0.780,为基于单图像特征预测SPAD值的优选特征。在3种频域特征中,小波特征与SPAD值的相关性表现最优。因此,小波变换为优选坡垒多光谱图像频域变换方法。基于不同图像特征构建的SPAD值预测模型,性能表现排序为单频域特征模型 < 单空域特征模型 < 融合特征模型,最适建模算法为RF、XGBoost算法。基于RF的融合特征模型为最适模型,检验R2达到0.791,较单空域特征模型的检验R2提高了7.9%。
      结论 引入3种频域特征能够提高坡垒SPAD值预测精度,且基于RF的融合特征模型获得了较高的预测精度,因此融合多光谱空频域特征并结合机器学习算法,可作为一种有效的幼龄坡垒相对叶绿素含量预测工具,有利于坡垒培育经营工作的智能化发展。

       

      Abstract:
      Objective This paper studies the multispectral image-based estimation method for chlorophyll content in Hopea hainanensis, so as to explore the feasibility of fusing multispectral frequency domain features to estimate chlorophyll content, and provide an effective tool for nondestructive monitoring of chlorophyll content in H. hainanensis.
      Method By combining vegetation index with traditional threshold segmentation methods, the background of multispectral images of H. hainanensis was removed, and the optimal segmentation method was determined by F1 as the segmentation accuracy evaluation index. Then, based on the segmented multispectral image, spatial domain features (vegetation index and texture features) were extracted, and three frequency domain features were introduced. The measured value of relative chlorophyll content (SPAD value) was measured using a portable chlorophyll analyzer SPAD. And based on correlation analysis and Lasso algorithm, image features were filtered to determine the preferred features which were strongly correlated with SPAD value of H. hainanensis. Finally, based on partial least-squares regression (PLSR), random forest (RF) and XGBoost algorithm, multispectral spatial domain, frequency domain and fusion feature models were established, and precision verification was conducted to determine the optimal model form for SPAD value estimation of young H. hainanensis.
      Result The segmentation method combining DVI and Kapur threshold achieved the highest segmentation accuracy, with F1 of 0.917. Therefore, it was the most suitable segmentation method for H. hainanensis canopy multispectral images. Many spatial and frequency domain features of multispectral images exhibited significant correlations with the SPAD values of H. hainanensis. The most correlated feature was the modified chlorophyll absorption reflectivity index, with a correlation coefficient of −0.780. It was the preferred feature for estimating SPAD values based on single image features. Among the three frequency domain features, the correlation performance of wavelet features was the best. Therefore, wavelet transform was the preferred frequency domain transformation method for slope barrier multispectral images. The SPAD value estimation models constructed with different image features were sorted by performance as single frequency domain feature model < single spatial domain feature model < fused feature model, and the corresponding optimal modeling algorithms were RF and XGBoost, respectively. The fusion feature model based on RF was the optimal model, with a test R2 of 0.791, which was 7.9% higher than the test R2 of a single spatial feature model.
      Conclusion The estimation accuracy of H. hainanensis SPAD values can be improved by introducing three frequency domain features, and the fusion feature model based on RF can achieve good estimation accuracy. Therefore, integrating multispectral spatial and frequency domain features with machine learning algorithms can be used as an effective tool for estimating the relative chlorophyll content of young H. hainanensis, which is conducive to the intelligent development of H. hainanensis cultivation and management.

       

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