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基于模拟训练深度学习的地基高光谱遥感植被反射率大气校正

Atmospheric correction of vegetation reflectance with simulation-trained deep learning for ground-based hyperspectral remote sensing.

作者信息

Qamar Farid, Dobler Gregory

机构信息

Department of Civil and Environmental Engineering, University of Delaware, Newark, DE, 19716, USA.

Data Science Institute, University of Delaware, Newark, DE, 19716, USA.

出版信息

Plant Methods. 2023 Jul 29;19(1):74. doi: 10.1186/s13007-023-01046-6.

Abstract

BACKGROUND

Vegetation spectral reflectance obtained with hyperspectral imaging (HSI) offer non-invasive means for the non-destructive study of their physiological status. The light intensity at visible and near-infrared wavelengths (VNIR, 0.4-1.0µm) captured by the sensor are composed of mixtures of spectral components that include the vegetation reflectance, atmospheric attenuation, top-of-atmosphere solar irradiance, and sensor artifacts. Common methods for the extraction of spectral reflectance from the at-sensor spectral radiance offer a trade-off between explicit knowledge of atmospheric conditions and concentrations, computational efficiency, and prediction accuracy, and are generally geared towards nadir pointing platforms. Therefore, a method is needed for the accurate extraction of vegetation reflectance from spectral radiance captured by ground-based remote sensors with a side-facing orientation towards the target, and a lack of knowledge of the atmospheric parameters.

RESULTS

We propose a framework for obtaining the vegetation spectral reflectance from at-sensor spectral radiance, which relies on a time-dependent Encoder-Decoder Convolutional Neural Network trained and tested using simulated spectra generated from radiative transfer modeling. Simulated at-sensor spectral radiance are produced from combining 1440 unique simulated solar angles and atmospheric absorption profiles, and 1000 different spectral reflectance curves of vegetation with various health indicator values, together with sensor artifacts. Creating an ensemble of 10 models, each trained and tested on a separate 10% of the dataset, results in the prediction of the vegetation spectral reflectance with a testing r of 98.1% (±0.4). This method produces consistently high performance with accuracies >90% for spectra with resolutions as low as 40 channels in VNIR each with 40 nm full width at half maximum (FWHM) and greater, and remains viable with accuracies >80% down to a resolution of 10 channels with 60 nm FWHM. When applied to real sensor obtained spectral radiance data, the predicted spectral reflectance curves showed general agreement and consistency with those corrected by the Compound Ratio method.

CONCLUSIONS

We propose a method that allows for the accurate estimation of the vegetation spectral reflectance from ground-based HSI platforms with sufficient spectral resolution. It is capable of extracting the vegetation spectral reflectance at high accuracy in the absence of knowledge of the exact atmospheric compositions and conditions at time of capture, and the lack of available sensor-measured spectral radiance and their true ground-truth spectral reflectance profiles.

摘要

背景

利用高光谱成像(HSI)获得的植被光谱反射率为其生理状态的无损研究提供了非侵入性手段。传感器在可见光和近红外波长(VNIR,0.4 - 1.0µm)捕获的光强度由多种光谱成分混合而成,这些成分包括植被反射率、大气衰减、大气顶太阳辐照度和传感器伪像。从传感器处的光谱辐射中提取光谱反射率的常用方法在大气条件和浓度的明确知识、计算效率和预测准确性之间进行权衡,并且通常适用于天底指向平台。因此,需要一种方法来从面向目标的地面遥感传感器捕获的光谱辐射中准确提取植被反射率,同时缺乏大气参数的知识。

结果

我们提出了一个从传感器处的光谱辐射中获取植被光谱反射率的框架,该框架依赖于一个随时间变化的编码器 - 解码器卷积神经网络,使用从辐射传输模型生成的模拟光谱进行训练和测试。模拟的传感器处光谱辐射是通过组合1440个独特的模拟太阳角度和大气吸收剖面、1000条具有不同健康指标值的植被不同光谱反射率曲线以及传感器伪像而产生的。创建一个由10个模型组成的集成,每个模型在数据集的单独10%上进行训练和测试,结果在测试中植被光谱反射率的预测相关系数r为98.1%(±0.4)。该方法对于分辨率低至VNIR中40个通道(每个通道半高宽(FWHM)为40nm及更高)的光谱始终具有>90%的高精度,并且在分辨率低至10个通道(FWHM为60nm)时,精度>80%时仍然可行。当应用于实际传感器获得的光谱辐射数据时,预测的光谱反射率曲线与通过复合比率法校正的曲线显示出总体一致性。

结论

我们提出了一种方法,该方法能够从具有足够光谱分辨率的地面HSI平台准确估计植被光谱反射率。它能够在不知道捕获时确切大气成分和条件,以及缺乏可用的传感器测量光谱辐射及其真实地面真值光谱反射率剖面的情况下,高精度地提取植被光谱反射率。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/da34/10385980/97ee063d82aa/13007_2023_1046_Fig1_HTML.jpg

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