Jin Jia, Wang Quan, Song Guangman
Faculty of Agriculture, Shizuoka University, Shizuoka, 422-8529, Japan.
Institute of Geography and Oceanography, Nanning Normal University, Nanning, 530001, China.
Photosynth Res. 2022 Jan;151(1):71-82. doi: 10.1007/s11120-021-00873-9. Epub 2021 Sep 7.
The plant photosynthetic capacity determines the photosynthetic rates of the terrestrial biosphere. Timely approaches to obtain the spatiotemporal variations of the photosynthetic parameters are urgently needed to grasp the gas exchange rhythms of the terrestrial biosphere. While partial least squares regression (PLSR) is a promising way to predict the photosynthetic parameters maximum carboxylation rate (V) and maximum electron transport rate (J) rapidly and non-destructively from hyperspectral data, the approach, however, faces a high risk of overfitting and remains a high hurdle for applications. In this study, we propose to incorporate proper band selection techniques for PLSR analysis to refine the goodness-of-fit (GoF) in estimating V and J. Different band selection procedures coupled with different hyperspectral forms (reflectance, apparent absorption, as well as derivatives) were examined. Our results demonstrate that the GoFs of PLSR models could be greatly improved by combining proper band selection methods (especially the iterative stepwise elimination approach) rather than using full bands as commonly done with PLSR. The results also show that the 1st order derivative spectra had a balance between accuracy (R = 0.80 for V, and 0.94 for J) and denoising (when a Gaussian noise was added to each leaf reflectance spectrum at each wavelength with a standard deviation of 1%) on retrieving photosynthetic parameters from hyperspectral data. Our results clearly illustrate the advantage of using the band selection approach for PLSR dimensionality reduction and model optimization, highlighting the superiority of using derivative spectra for V and J estimations, which should provide valuable insights for retrieving photosynthetic parameters from hyperspectral remotely sensed data.
植物的光合能力决定了陆地生物圈的光合速率。为了掌握陆地生物圈的气体交换节律,迫切需要及时获取光合参数的时空变化。虽然偏最小二乘回归(PLSR)是一种从高光谱数据中快速、无损地预测光合参数最大羧化速率(V)和最大电子传递速率(J)的有效方法,然而,该方法面临着过度拟合的高风险,并且在应用中仍然是一个很大的障碍。在本研究中,我们建议将适当的波段选择技术纳入PLSR分析,以改进在估计V和J时的拟合优度(GoF)。研究了不同的波段选择程序与不同的高光谱形式(反射率、表观吸收率以及导数)相结合的情况。我们的结果表明,通过结合适当的波段选择方法(特别是迭代逐步消除法),而不是像PLSR通常那样使用全波段,可以大大提高PLSR模型的GoF。结果还表明,一阶导数光谱在从高光谱数据中反演光合参数时,在准确性(V的R = 0.80,J的R = 0.94)和去噪(当在每个波长的每个叶片反射光谱上添加标准差为1%的高斯噪声时)之间取得了平衡。我们的结果清楚地说明了使用波段选择方法进行PLSR降维和模型优化的优势,突出了使用导数光谱估计V和J的优越性,这应该为从高光谱遥感数据中反演光合参数提供有价值的见解。