Department of Mathematics, University of Leicester, Leicester LE1 7RH, UK.
Department of Natural Resources and Environmental Management, University of Haifa, Haifa 3498838, Israel.
Sensors (Basel). 2021 Nov 18;21(22):7662. doi: 10.3390/s21227662.
Data on artificial night-time light (NTL), emitted from the areas, and captured by satellites, are available at a global scale in format. In the meantime, data on properties of NTL give more information for further analysis. Such data, however, are available locally or on a commercial basis only. In our recent work, we examined several machine learning techniques, such as linear regression, kernel regression, random forest, and elastic map models, to convert the panchromatic NTL images into colored ones. We compared red, green, and blue light levels for eight geographical areas all over the world with panchromatic light intensities and characteristics of built-up extent from spatially corresponding pixels and their nearest neighbors. In the meantime, information from more distant neighboring pixels might improve the predictive power of models. In the present study, we explore this neighborhood effect using convolutional neural networks (CNN). The main outcome of our analysis is that the neighborhood effect goes in line with the geographical extent of metropolitan areas under analysis: For smaller areas, optimal input image size is smaller than for bigger ones. At that, for relatively large cities, the optimal input image size tends to differ for different colors, being on average higher for red and lower for blue lights. Compared to other machine learning techniques, CNN models emerged comparable in terms of Pearson's correlation but showed performed better in terms of WMSE, especially for testing datasets.
有关人工夜间灯光(NTL)的数据,从区域发出并由卫星捕获,以全球范围内的 格式提供。同时,NTL 属性的数据为进一步分析提供了更多信息。然而,此类数据仅在本地或以商业为基础提供。在我们最近的工作中,我们检查了几种机器学习技术,例如线性回归、核回归、随机森林和弹性图模型,以将全色 NTL 图像转换为彩色图像。我们将来自世界各地的八个地理区域的红、绿、蓝光水平与全色光强度以及空间对应像素及其最近邻的建成区域特征进行了比较。同时,来自更远邻域像素的信息可能会提高模型的预测能力。在本研究中,我们使用卷积神经网络(CNN)探索这种邻域效应。我们分析的主要结果是,邻域效应与所分析的大都市地区的地理范围一致:对于较小的区域,最佳输入图像尺寸小于较大的区域。对于相对较大的城市,最佳输入图像尺寸对于不同颜色存在差异,红色光的平均尺寸较高,蓝光的平均尺寸较低。与其他机器学习技术相比,CNN 模型在皮尔逊相关系数方面表现相当,但在 WMSE 方面表现更好,尤其是在测试数据集方面。