基于高光谱反射光谱的冷杉幼苗针叶叶绿素和水分含量的非破坏性估算。

Forestry research Pub Date : 2024-07-02 eCollection Date: 2024-01-01 DOI:10.48130/forres-0024-0021
Dong Xing, Penghui Sun, Yulin Wang, Mei Jiang, Siyu Miao, Wei Liu, Huahong Huang, Erpei Lin
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引用次数: 0

摘要

水杉是中国最重要的乡土软木树种,具有重要的经济和生态价值。对这种具有重要商业价值的树种进行育苗和种质评价,准确评估其生长状况至关重要。针叶叶绿素含量(LCC)和针叶含水量(LWC)决定着植物的健康状况和光合效率,是植物生长状况的重要指标。本研究首次基于高光谱反射光谱和机器学习算法估算了水杉幼苗的叶绿素含量和针叶含水量。采用光谱范围为 870 至 1,720 nm 的线扫描高光谱成像系统拍摄了不同 LCC 和 LWC 的幼苗高光谱图像。使用萨维茨基-戈莱平滑(SG)算法提取并预处理了幼苗冠层区域的光谱数据。随后,采用连续投影算法(SPA)和竞争性自适应重加权采样(CARS)方法提取信息量最大的波长。此外,还利用 SVM、PLSR 和 ANNs 建立了基于有效波长预测 LCC 和 LWC 的模型。结果表明,CARS-ANN 对 LCC 的预测效果最好,R²C = 0.932,RSMEC = 0.224,R²P = 0.969,RSMEP = 0.157。同样,SPA-ANNs 模型对 LWC 的预测效果最好,R²C = 0.952,RSMEC = 0.049,R²P = 0.948,RSMEP = 0.051。总之,本研究强调了将高光谱成像(HSI)与机器学习算法相结合,作为一种快速、非破坏性和高精度的方法来估算中国杉木 LCC 和 LWC 的巨大潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Non-destructive estimation of needle leaf chlorophyll and water contents in Chinese fir seedlings based on hyperspectral reflectance spectra.

Chinese fir is the most important native softwood tree in China and has significant economic and ecological value. Accurate assessment of the growth status is critical for both seedling cultivation and germplasm evaluation of this commercially significant tree. Needle leaf chlorophyll content (LCC) and needle leaf water content (LWC), which are determinants of plant health and photosynthetic efficiency, are important indicators of the growth status in plants. In this study, for the first time, the LCC and LWC of Chinese fir seedlings were estimated based on hyperspectral reflectance spectra and machine learning algorithms. A line-scan hyperspectral imaging system with a spectral range of 870 to 1,720 nm was used to capture hyperspectral images of seedlings with varying LCC and LWC. The spectral data of the canopy area of the seedlings were extracted and preprocessed using the Savitzky-Golay smoothing (SG) algorithm. Subsequently, the Successive Projection Algorithm (SPA) and Competitive Adaptive Reweighted Sampling (CARS) methods were employed to extract the most informative wavelengths. Moreover, SVM, PLSR and ANNs were utilized to construct models that predict LCC and LWC based on effective wavelengths. The results indicated that the CARS-ANNs were the best for predicting LCC, with R²C = 0.932, RSMEC = 0.224, and R²P = 0.969, RSMEP = 0.157. Similarly, the SPA-ANNs model exhibited the best prediction performance for LWC, with R²C = 0.952, RSMEC = 0.049, and R²P = 0.948, RSMEP = 0.051. In conclusion, the present study highlights the significant potential of combining hyperspectral imaging (HSI) with machine learning algorithms as a rapid, non-destructive, and highly accurate method for estimating LCC and LWC in Chinese fir.

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