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A correlation analysis study on satellite image nightlight features and development of Africa regional economy

机译:卫星图像夜灯特征与非洲区域经济发展的相关分析研究

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Nightlight intensity has become an important factor of measuring the wealthiness of a country or an area, it mostly relies on extracting the feature from the satellite images and it becomes a dominate factor that determines the economic development. This study used CNN based deep learning model to extract the light intensity feature from the satellite images and associate it with additional survey information. CNN has been wildly used for image feature extraction. Then, the study combined the survey data and light intensity feature together and conducted comprehensive experiments on different regression models that using different regularizations and optimization approaches. The paper studied the influence of regularization and optimization approaches to the model. Through the feature selection, hyper-parameter tuning, and model evaluation, the study can select the best model. This paper compares different linear regression models. They utilize different regularization and optimization. The experiment results indicate that Lasso regression model is the best model.
机译:夜灯强度已成为衡量国家或一个地区的富裕的重要因素,它主要依赖于从卫星图像中提取特征,并且它成为决定经济发展的主导因素。本研究使用了基于CNN的深度学习模型来从卫星图像中提取光强度特征,并将其与额外的调查信息相关联。 CNN已经疯狂地用于图像特征提取。然后,该研究将调查数据和光强度的特征结合在一起,并在不同的回归模型中进行了综合实验,使用不同的规则化和优化方法。本文研究了正规化和优化方法对模型的影响。通过特征选择,超参数调整和模型评估,研究可以选择最佳模型。本文比较了不同的线性回归模型。它们利用不同的正则化和优化。实验结果表明套索回归模型是最佳模型。

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