4.7 Article

Impervious Surfaces Mapping at City Scale by Fusion of Radar and Optical Data through a Random Forest Classifier

Journal

REMOTE SENSING
Volume 13, Issue 15, Pages -

Publisher

MDPI
DOI: 10.3390/rs13153040

Keywords

data fusion; Sentinel-1 SAR; Sentienel-2 MSI; random forest classifier; land cover classification; impervious surface extraction and mapping; Pakistani cities; Sustainable Development Goals

Funding

  1. UNLV University Libraries Open Article Fund

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This study successfully mapped impervious surfaces of nine Pakistani cities and estimated their growth rates using a fusion technique with Sentinel 1 and 2 satellite data. The approach achieved high accuracy of 98% and strong linear relationship with external data. The findings provide valuable information for urban planners and environmentalists.
Urbanization increases the amount of impervious surfaces, making accurate information on spatial and temporal expansion trends essential; the challenge is to develop a cost- and labor-effective technique that is compatible with the assessment of multiple geographical locations in developing countries. Several studies have identified the potential of remote sensing and multiple source information in impervious surface quantification. Therefore, this study aims to fuse datasets from the Sentinel 1 and 2 Satellites to map the impervious surfaces of nine Pakistani cities and estimate their growth rates from 2016 to 2020 utilizing the random forest algorithm. All bands in the optical and radar images were resampled to 10 m resolution, projected to same coordinate system and geometrically aligned to stack into a single product. The models were then trained, and classifications were validated with land cover samples from Google Earth's high-resolution images. Overall accuracies of classified maps ranged from 85% to 98% with the resultant quantities showing a strong linear relationship (R-squared value of 0.998) with the Copernicus Global Land Services data. There was up to 9% increase in accuracy and up to 12 % increase in kappa coefficient from the fused data with respect to optical alone. A McNemar test confirmed the superiority of fused data. Finally, the cities had growth rates ranging from 0.5% to 2.5%, with an average of 1.8%. The information obtained can alert urban planners and environmentalists to assess impervious surface impacts in the cities.

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