Integration of a parameter combination discriminator improves the accuracy of chlorophyll inversion from spectral imaging of rice

Fenghua Yu , Juchi Bai , Jianyu Fang , Sien Guo , Shengfan Zhu , Tongyu Xu
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Abstract

The PROSPECT model, widely employed for leaf radiation transfer analysis, relies heavily on input biochemical parameters to calculate spectral reflectance. This dependence often results in similar simulated spectra for different parameter combinations, which complicates the inversion of leaf chlorophyll content (Cab). To address this ill-posed problem, we enhanced the model's application by integrating a support vector machine (SVM)-based parameter combination discriminator with the Look-Up Table (LUT) constructed from the PROSPECT model. We marked samples in the LUT to reflect their closeness to measured parameters, facilitating the identification of reasonable versus unreasonable parameter combinations. The discriminator could effectively discriminate between reasonable and unreasonable parameter combinations, achieving accuracies of 0.894 and 0.888 in the training and test sets, respectively. The discriminator was then employed to refine the LUT, and an improved third-generation non-dominated ranking genetic algorithm (NSGA-III) was used to optimize the extreme learning machine. The inversion of rice Cab using the refined LUT and the NSGA-III demonstrated substantial improvements. The LUT was significantly improved after integration with the discriminator, yielding R2 and RMSE of 0.665 and 7.220 ​μg ​cm−2, respectively. The NSGA-III inversion, which utilized the “constraint method” with discriminator results as optimization objectives, achieved the best inversion accuracy, with R2 and RMSE values of 0.809 and 4.788, respectively. This study demonstrates that the effective use of a parameter discriminator can significantly enhance the accuracy of Cab inversion based on the PROSPECT model, offering a substantial advancement in addressing its inherent ill-posed challenges.

整合参数组合判别器提高水稻光谱成像叶绿素反演的准确性
广泛用于叶片辐射传递分析的 PROSPECT 模型在很大程度上依赖于输入的生化参数来计算光谱反射率。这种依赖性往往会导致不同参数组合产生相似的模拟光谱,从而使叶片叶绿素含量(Cab)的反演变得复杂。为了解决这个棘手的问题,我们将基于支持向量机(SVM)的参数组合判别器与 PROSPECT 模型构建的查找表(LUT)相结合,从而增强了模型的应用。我们对 LUT 中的样本进行标记,以反映其与测量参数的接近程度,从而便于识别合理与不合理的参数组合。判别器能有效区分合理与不合理的参数组合,在训练集和测试集中的准确率分别达到 0.894 和 0.888。随后,利用判别器改进了 LUT,并使用改进的第三代非优势排序遗传算法(NSGA-III)优化了极端学习机。使用改进后的 LUT 和 NSGA-III 对水稻驾驶室进行的反演显示出巨大的改进。将 LUT 与判别器整合后,LUT 得到明显改善,R2 和 RMSE 分别为 0.665 和 7.220 μg cm-2。采用 "约束法 "的 NSGA-III 反演以判别器结果为优化目标,取得了最佳反演精度,R2 和 RMSE 值分别为 0.809 和 4.788。这项研究表明,有效使用参数判别器可以显著提高基于 PROSPECT 模型的 Cab 反演精度,在解决其固有的问题挑战方面取得了重大进展。
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