利用高光谱成像与深度多任务回归和转移分量分析同时预测水稻叶片的 SPAD 和含水量。

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2025-01-15 Epub Date: 2024-09-02 DOI:10.1002/jsfa.13853
Yuanning Zhai, Jun Wang, Lei Zhou, Xincheng Zhang, Yun Ren, Hengnian Qi, Chu Zhang
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引用次数: 0

摘要

背景:含水量和叶绿素含量是监测水稻生长状况的重要指标。同时检测含水量和叶绿素含量具有重要意义。不同品种的水稻在表型上存在差异,因此很难建立通用模型。本研究利用高光谱成像技术检测了三个水稻品种(嘉华 1 号、秀水 121 和秀水 134)的土壤和植物分析仪发育(SPAD)值以及水稻鲜叶的含水量:利用偏最小二乘回归和卷积神经网络建立了单任务和多任务模型。迁移成分分析(TCA)被用作迁移学习来学习共同特征,以实现任意两个品种之间近似相同的分布。还利用源领域的特征建立了单任务和多任务模型,并将这些模型应用于目标领域。这些结果表明,对于每个水稻品种的模型,大多数多任务模型的预测准确率接近单任务模型的预测准确率。至于 TCA,结果显示单任务模型在所有迁移学习任务中都取得了良好的表现:结论:与原始模型相比,使用 TCA 学习到的特征的模型在源领域和目标领域都取得了良好的差异化结果。多任务模型可以同时预测 SPAD 值和含水量,然后迁移到另一个水稻品种上,这可以提高模型构建的效率,实现水稻生长指标的快速检测。© 2024 化学工业学会。
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Simultaneously predicting SPAD and water content in rice leaves using hyperspectral imaging with deep multi-task regression and transfer component analysis.

Background: Water content and chlorophyll content are important indicators for monitoring rice growth status. Simultaneous detection of water content and chlorophyll content is of significance. Different varieties of rice show differences in phenotype, resulting in the difficulties of establishing a universal model. In this study, hyperspectral imaging was used to detect the Soil and Plant Analyzer Development (SPAD) values and water content of fresh rice leaves of three rice varieties (Jiahua 1, Xiushui 121 and Xiushui 134).

Results: Both partial least squares regression and convolutional neural networks were used to establish single-task and multi-task models. Transfer component analysis (TCA) was used as transfer learning to learn the common features to achieve an approximate identical distribution between any two varieties. Single-task and multi-task models were also built using the features of the source domain, and these models were applied to the target domain. These results indicated that for models of each rice variety the prediction accuracy of most multi-task models was close to that of single-task models. As for TCA, the results showed that the single-task model achieved good performance for all transfer learning tasks.

Conclusion: Compared with the original model, good and differentiated results were obtained for the models using features learned by TCA for both the source domain and target domain. The multi-task models could be constructed to predict SPAD values and water content simultaneously and then transferred to another rice variety, which could improve the efficiency of model construction and realize rapid detection of rice growth indicators. © 2024 Society of Chemical Industry.

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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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