基于时间序列预测贝叶斯线性回归的农田NDVI建模不确定性量化

M. Srinivas, P. Prasad
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摘要

本研究探讨了贝叶斯线性回归在遥感数据不确定性预测中的应用。为了预测不确定性,该研究考虑了印度北方邦(Uttar Pradesh)农业领域的SENTINEL-2卫星数据。利用Google Earth Engine的分层抽样方法,将生成的随机点映射到农田上。数据以各农田归一化植被指数(NDVI)最大值的形式收集。使用贝叶斯线性回归(一种概率深度学习方法)探索时间序列预测的动态。将模型不确定性定义为认知不确定性,利用线性回归中贝叶斯统计的先验和后验概率参数来评估模型的不确定性。对同一数据预测的回归线的数目显示了不确定性的证据。贝叶斯线性回归模型对预测的NDVI值有很高的不确定性。模型不确定性的变化是通过将数据集分成几个样本来测量的,并且可以观察到,随着数据的增加,不确定性降低。此外,随着数据的增加,后验密度变得更尖锐,这对应于方差的减少。进一步扩展了高斯基函数回归分析的概念,以确定模型不确定性随数据量增加的影响。分析表明,随着数据的增加,不确定性的影响也得到了同样的结果。进一步,建立了以高斯分布为基函数的非线性多项式回归模型,以评估证据函数在捕获不同自由度不确定性时的边际概率。使用贝叶斯统计的高斯分布的多项式回归捕获了不确定性,并证实了不确定性是在较低的自由度下捕获的。
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Modeling Uncertainty Quantification of NDVI of Agricultural Fields through Bayesian Linear Regression in Time Series Prediction
The current research discusses the applications of Bayesian linear regression to predict the uncertainty of remote sensing data. To predict the uncertainty, the study considered the SENTINEL-2 satellite data of agricultural fields of Uttar Pradesh state of India. Using the stratified sampling method in Google Earth Engine, the random points generated are mapped to agricultural fields. Data was collected in the form of maximum Normalized Difference Vegetation Index (NDVI) values of each agricultural field. The dynamics of the time series predictions were explored with Bayesian linear regression, a probabilistic deep learning method. The model uncertainty defined as epistemic uncertainty is evaluated with the prior and posterior probability parameters of Bayesian statistics in linear regression. The number of regression lines predicted for the same data shows evidence of uncertainty. The Bayesian linear regression models show evidence of high uncertainty for the predicted NDVI values. The variation in model uncertainty is measured by dividing the dataset into samples and it is observed that with increase in data the uncertainty is reduced. Also, with the increase in data, the posterior density becomes sharper which corresponds to a decrease in variance. Further, the study extended the concept of regression analysis with Gaussian basis functions to determine the effect of model uncertainty with an increase in data. The analysis has shown the same result in knowing the effect of uncertainty with the increase in data. Further, a nonlinear polynomial regression model with a Gaussian distribution as a basis function was developed to evaluate the marginal probabilities of the evidence function in capturing the uncertainty with varying degrees of freedom. The polynomial regression with a Gaussian distribution using Bayesian statistics has captured the uncertainty and confirmed that the uncertainty is captured at lower degrees of freedom.
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