Abstract

Accurately monitoring the spatiotemporal dynamics of impervious surfaces is very important for understanding the process of urbanization. However, the complicated makeup and spectral heterogeneity of impervious surfaces create difficulties for impervious surface monitoring. In this study, we propose an automatic method to capture the spatiotemporal expansion of impervious surfaces using spectral generalization and time series Landsat imagery. First, the multitemporal compositing and relative radiometric normalization methods were used to extract phenological information and ensure spectral consistency between reference imagery and monitored imagery. Second, we automatically derived training samples from the prior MSMT_IS30-2020 impervious surface products and migrated the surface reflectance of impervious surfaces in the reference period of 2020 to other periods (1985–2015). Third, the random forest classification method, trained using the migrated surface reflectance of impervious surfaces and pervious surface training samples at each period, was employed to extract temporally independent impervious surfaces. Further, a temporal consistency check method was applied to ensure the consistency and reliability of the monitoring results. According to qualitative and quantitative validation results, the method achieved an overall accuracy of 90.9% and kappa coefficient of 0.859 in identifying the spatiotemporal expansion of impervious surfaces and performed better in capturing the impervious surface dynamics when compared with other impervious surface datasets. Lastly, our results indicate that a rapid increase of impervious surfaces was observed in the Yangtze River Delta, and the area of impervious surfaces in 2000 and 2020 was 1.86 times and 4.76 times that of 1985, respectively. Therefore, it could be concluded that the proposed method offered a novel perspective for providing timely and accurate impervious surface dynamics.

Highlights

  • Impervious surfaces, mainly composed of anthropogenic materials that prevent water from penetrating into the soil [1, 2], are important indicators for understanding the process of urbanization and assessing the environmental quality [3]

  • We proposed to migrate the surface reflectance of impervious surfaces in 2020 to other periods and derived training samples from MSMT_IS30-2020 impervious surface products, which was the key for automatic monitoring

  • The results indicated that the monitoring method achieved an overall accuracy of 90.9% and kappa coefficient of 0.859

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Summary

Introduction

Impervious surfaces, mainly composed of anthropogenic materials that prevent water from penetrating into the soil [1, 2], are important indicators for understanding the process of urbanization and assessing the environmental quality [3]. A series of Journal of Remote Sensing impervious surface monitoring methods have been proposed for various satellite data with different spatial and temporal resolutions. The preclassification method treats land cover changes as independent land cover types and collects stable and changed training samples to directly classify multidate imagery for generating temporally consistent impervious surface results [5, 17], while the postclassification uses multiepoch training samples to independently train the classifier on the corresponding imagery and combines the multiepoch impervious surface classification results to monitor the spatiotemporal expansion of impervious surfaces [15, 18, 19].

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