Abstract

The scarcity of high-resolution urban digital elevation model (DEM) datasets, particularly in certain developing countries, has posed a challenge for many water-related applications such as flood risk management. A solution to address this is to develop effective approaches to reconstruct high-resolution DEMs from their low-resolution equivalents that are more widely available. However, the current high-resolution DEM reconstruction approaches mainly focus on natural topography. Few attempts have been made for urban topography, which is typically an integration of complex artificial and natural features. This study proposed a novel multi-scale mapping approach based on convolutional neural network (CNN) to deal with the complex features of urban topography and to reconstruct high-resolution urban DEMs. The proposed multi-scale CNN model was firstly trained using urban DEMs that contained topographic features at different resolutions, and then used to reconstruct the urban DEM at a specified (high) resolution from a low-resolution equivalent. A two-level accuracy assessment approach was also designed to evaluate the performance of the proposed urban DEM reconstruction method, in terms of numerical accuracy and morphological accuracy. The proposed DEM reconstruction approach was applied to a 121 km2 urbanized area in London, United Kingdom. Compared with other commonly used methods, the current CNN-based approach produced superior results, providing a cost-effective innovative method to acquire high-resolution DEMs in other data-scarce regions.

Highlights

  • Digital elevation models (DEMs) have been widely used in many fields such as landform evolution, soil erosion modeling, and other geo-simulations [1,2,3,4]

  • This paper focused on developing an innovative multi-scale network for urban DEM reconstruction rather than seeking the backbone architecture with the best performance; we selected information distillation distillation block block (IDB) due to its reported excellent performance in accuracy and efficiency in computational cost

  • We selected nearest neighbor (NN) instead of other alternative approaches such as bilinear interpolation (BI) or cubic convolution (CC) because this paper focused on urban DEM, which includes a large amount of abrupt elevation changes

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Summary

Introduction

Digital elevation models (DEMs) have been widely used in many fields such as landform evolution, soil erosion modeling, and other geo-simulations [1,2,3,4]. For LiDAR data in particular, many data filtering and fusion methods for improving data quality have been developed to support urban flood modelling to achieve better performance [11,12,13,14,15]. These LiDAR data processing methods are usually applied on high-resolution topographic datasets, and cannot create high-resolution DEMs from low-resolution data. These data acquisition approaches are usually labor-intensive and financially expensive, hindering their wider application across a large domain. High-resolution urban DEMs are not always available, especially for cities in developing countries

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