Ding Xiaotian, Fan Yifan, Li Yuguo, Ge Jian
College of Civil Engineering and Architecture, Zhejiang University, Hangzhou, China.
Center for Balance Architecture, Zhejiang University, Hangzhou, China.
Environ Sci Pollut Res Int. 2023 Dec;30(59):123507-123526. doi: 10.1007/s11356-023-30843-8. Epub 2023 Nov 21.
High-resolution urban surface information, e.g., the fraction of impervious/pervious surface, is pivotal in studies of local thermal/wind environments and air pollution. In this study, we introduced and validated a domain adaptive land cover classification model, to automatically classify Google Earth images into pixel-based land cover maps. By combining domain adaptation (DA) and semi-supervised learning (SSL) techniques, our model demonstrates its effectiveness even when trained with a limited dataset derived from Gaofen2 (GF2) satellite images. The model's overall accuracy on the translated GF2 dataset improved significantly from 19.5% to 75.2%, and on the Google Earth image dataset from 23.1% to 61.5%. The overall accuracy is 2.9% and 3.4% higher than when using only DA. Furthermore, with this model, we derived land cover maps and investigated the impact of land surface composition on the local meteorological parameters and air pollutant concentrations in the three most developed urban agglomerations in China, i.e., Beijing, Shanghai and the Great Bay Area (GBA). Our correlation analysis reveals that air temperature exhibits a strong positive correlation with neighboring artificial impervious surfaces, with Pearson correlation coefficients higher than 0.6 in all areas except during the spring in the GBA. However, the correlation between air pollutants and land surface composition is notably weaker and more variable. The primary contribution of this paper is to provide an efficient method for urban land cover extraction which will be of great value for assessing the urban surface composition, quantifying the impact of land use/land cover, and facilitating the development of informed policies.
高分辨率城市地表信息,例如不透水/透水表面的比例,在局部热/风环境和空气污染研究中至关重要。在本研究中,我们引入并验证了一种域自适应土地覆盖分类模型,用于将谷歌地球图像自动分类为基于像素的土地覆盖地图。通过结合域自适应(DA)和半监督学习(SSL)技术,我们的模型即使在使用从高分二号(GF2)卫星图像获得的有限数据集进行训练时也能证明其有效性。该模型在翻译后的GF2数据集上的总体准确率从19.5%显著提高到75.2%,在谷歌地球图像数据集上从23.1%提高到61.5%。总体准确率比仅使用DA时分别高出2.9%和3.4%。此外,利用该模型,我们绘制了土地覆盖地图,并研究了中国三个最发达的城市群,即北京、上海和大湾区(GBA)的地表组成对当地气象参数和空气污染物浓度的影响。我们的相关分析表明,气温与相邻的人工不透水表面呈现出很强的正相关,除大湾区春季外,所有地区的皮尔逊相关系数均高于0.6。然而,空气污染物与地表组成之间的相关性明显较弱且更具变化性。本文的主要贡献在于提供了一种高效的城市土地覆盖提取方法,这对于评估城市地表组成、量化土地利用/土地覆盖的影响以及促进明智政策的制定具有重要价值。