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Sensitivity analysis of artificial neural network for chlorophyll prediction using hyperspectral data

机译:高光谱数据对叶绿素预测人工神经网络的敏感性分析

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Hyperspectral acquisition provides the spectral response in narrow and continuous spectral channel. The high number of contiguous bands in hyperspectral remote sensing provides significant improvements in assessing subtle changes as compared to the multispectral satellite datasets in context of spectral resolution. Therefore, the main goal of the present research is to evaluate the sensitivity of the artificial neural networks (ANNs) for chlorophyll prediction in the winter wheat crop using different hyperspectral spectral indices. For evaluating relative variable significance in the study, the Olden's function has been applied. The Lek's profile method is used for sensitivity analysis of ANNs for chlorophyll prediction using the vegetation indices such as Red Edge Inflection Point (REIP), Normalized Difference Vegetation Index (NDVI), Soil-Adjusted Vegetation Index (SAVI), and Structure-Insensitive Pigment Index (SIPI) derived from hyperspectral radiometer. The analysis indicates a high sensitivity of SAVI followed by NDVI, REIP and SIPI for chlorophyll retrieval using ANNs. The statistical performance indices obtained from calibration (RMSE = 0.27; index of agreement = 0.96) and validation (RMSE = 0.66; index of agreement = 0.83) suggested that the ANN model is appropriate for chlorophyll prediction with good efficiency. The outcome of this work can be used by upcoming hyperspectral missions such as Airborne Visible Infrared Imaging Spectrometer-Next Generation (AVIRIS-NG) and Hyperspectral Infrared Imager (HyspIRI) for large-scale estimation of chlorophyll and could help in the real-time monitoring of crop health status.
机译:高光谱采集提供窄和连续光谱通道中的光谱响应。高光谱遥感中的大量连续频段提供了在光谱分辨率上下文中与多光谱卫星数据集相比评估微妙变化的显着改进。因此,本研究的主要目的是评估使用不同超光谱谱指标的冬小麦作物中叶绿素预测的人工神经网络(ANN)的敏感性。为了评估研究中的相对变量意义,已应用Olden的功能。 LEK的型材方法用于使用植被指数(如红边拐点(REIP),归一化差异植被指数(NDVI),土壤调整后植被指数(SAVI)和结构不敏感颜料等植被指数对叶绿素预测的ANN的灵敏度分析源自高光谱辐射计的索引(SIPI)。分析表明,使用ANNS的叶​​绿素检索的NDVI,REIP和SIPI的高灵敏度。从校准获得的统计性能指数(RMSE = 0.27;协议指数= 0.96)和验证(RMSE = 0.66;协议指数= 0.83)表明ANN模型适用于叶绿素预测,效率良好。该工作的结果可以通过即将到来的高光谱任务使用,例如空中可见红外成像光谱仪 - 下一代(Aviris-NG)和高光谱红外成像器(Hyspiri),用于大规模估计叶绿素,可以帮助实时监测作物健康状况。

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