Abstract

The urban impervious surface has been recognized as a key quantifiable indicator in assessing urbanization and its environmental impacts. Adopting deep learning technologies, this study proposes an approach of three-dimensional convolutional neural networks (3D CNNs) to extract impervious surfaces from the WorldView-2 and airborne LiDAR datasets. The influences of different 3D CNN parameters on impervious surface extraction are evaluated. In an effort to reduce the limitations from single sensor data, this study also explores the synergistic use of multi-source remote sensing datasets for delineating urban impervious surfaces. Results indicate that our proposed 3D CNN approach has a great potential and better performance on impervious surface extraction, with an overall accuracy higher than 93.00% and the overall kappa value above 0.89. Compared with the commonly applied pixel-based support vector machine classifier, our proposed 3D CNN approach takes advantage not only of the pixel-level spatial and spectral information, but also of texture and feature maps through multi-scale convolutional processes, which enhance the extraction of impervious surfaces. While image analysis is facing large challenges in a rapidly developing big data era, our proposed 3D CNNs will become an effective approach for improved urban impervious surface extraction.

Highlights

  • This study proposes an approach of three-dimensional convolutional neural networks (3D Convolutional neural networks (CNNs)) to extract impervious surfaces from the WorldView-2 and airborne light detection and ranging (LiDAR) datasets

  • Impervious surfaces are usually defined as the entirety of impermeable surfaces such as roads, buildings, parking lots, and other urban infrastructures, where water cannot infiltrate through the ground (Sun et al 2011)

  • We further evaluate the influences of different 3D CNN parameters on impervious surface extraction

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Summary

Introduction

Impervious surfaces are usually defined as the entirety of impermeable surfaces such as roads, buildings, parking lots, and other urban infrastructures, where water cannot infiltrate through the ground (Sun et al 2011). Medium- and low-spatial-resolution images, including Landsat, MODIS data, have rich spectral information and high temporal resolution, which is suitable for Journal of the Indian Society of Remote Sensing (March 2019) 47(3):401412 large-scale impervious surface mapping (Xu et al 2018a, b; Zhang et al 2018). High-spatial-resolution images produce detailed land-cover and land-use information, but the spectral similarity of different objects and shadows of tall buildings or large trees limit the impervious surface extraction (Guo et al 2014). LiDAR data can improve impervious surface extraction by providing the height information that significantly distinguishes between objects with similar spectral characteristics (Im et al 2012). The LiDAR height variance is helpful for distinguishing buildings and trees

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