Hajeb Mohammad, Hamzeh Saeid, Alavipanah Seyed Kazem, Neissi Lamya, Verrelst Jochem
Department of Remote Sensing and GIS, Faculty of Geography, University of Tehran, Tehran, Iran.
Sugarcane Research and Training Institute and By-products Development of Khuzestan, Khuzestan, Iran.
Int J Appl Earth Obs Geoinf. 2023 Feb;116:103168. doi: 10.1016/j.jag.2022.103168. Epub 2023 Jan 3.
Quantifying biophysical and biochemical vegetation variables is of great importance in precision agriculture. Here, the ability of artificial neural networks (ANNs) to generate multiple outputs is exploited to simultaneously retrieve Leaf area index (LAI), leaf sheath moisture (LSM), leaf chlorophyll content (LCC), and leaf nitrogen concentration (LNC) of sugarcane from Sentinel-2 spectra. We apply a type of ANNs, Bayesian Regularized ANN (BRANN), which incorporates the Bayes' theorem into a regularization scheme to tackle the overfitting problem of ANN and improve its generalizability. Quantitatively assessing the result accuracy indicated RMSE values of 0.48 (m/m) for LAI, 2.36 (% wb) for LSM, 5.85 (μg/cm) for LCC, and 0.23 (%) for LNC, applying simultaneous retrieval. It was demonstrated that simultaneous retrievals of the variables outperformed the individual retrievals. The superiority of the proposed BRANN over a conventional ANN trained with the Levenberg-Marquardt algorithm was confirmed through statistical comparison of their results. The model was applied over the entire Sentinel-2 images to map the considered variables. The maps were probed to qualitatively evaluate the model performance. The results indicated that the retrievals reasonably represent spatial and temporal variations of the variables. Generally, this study demonstrated that the BRANN simultaneous retrieval model can provide faster and more accurate retrievals than those obtained from conventional ANNs and individual retrievals.
量化生物物理和生化植被变量在精准农业中至关重要。在此,利用人工神经网络(ANN)生成多个输出的能力,从哨兵 - 2光谱中同时反演甘蔗的叶面积指数(LAI)、叶鞘湿度(LSM)、叶片叶绿素含量(LCC)和叶片氮浓度(LNC)。我们应用一种人工神经网络,即贝叶斯正则化人工神经网络(BRANN),它将贝叶斯定理纳入正则化方案,以解决人工神经网络的过拟合问题并提高其泛化能力。定量评估结果准确性表明,同时反演时,LAI的均方根误差(RMSE)值为0.48(m/m),LSM为2.36(%湿基),LCC为5.85(μg/cm),LNC为0.23(%)。结果表明,变量的同时反演优于单独反演。通过对结果的统计比较,证实了所提出的BRANN相对于用Levenberg - Marquardt算法训练的传统人工神经网络的优越性。该模型应用于整个哨兵 - 2图像以绘制所考虑的变量图。对这些图进行定性评估以检验模型性能。结果表明,反演结果合理地反映了变量的空间和时间变化。总体而言,本研究表明,BRANN同时反演模型比传统人工神经网络和单独反演能提供更快、更准确的反演结果。