Urban surface classification using semi-supervised domain adaptive deep learning models and its application in urban environment studies

Environ Sci Pollut Res Int. 2023 Dec;30(59):123507-123526. doi: 10.1007/s11356-023-30843-8. Epub 2023 Nov 21.

Abstract

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.

Keywords: Air quality; Deep learning; Domain adaptation; Semi-supervised learning; Urban environment; Urban surface recognition.

MeSH terms

  • Air Pollutants*
  • Air Pollution*
  • China
  • Cities
  • Deep Learning*
  • Environmental Monitoring / methods
  • Temperature

Substances

  • Air Pollutants