Abstract

Object retrieval and reconstruction from very high resolution (VHR) synthetic aperture radar (SAR) images are of great importance for urban SAR applications, yet highly challenging owing to the complexity of SAR data. This paper addresses the issue of individual building segmentation from a single VHR SAR image in large-scale urban areas. To achieve this, we introduce building footprints from GIS data as complementary information and propose a novel conditional GIS-aware network (CG-Net). The proposed model learns multi-level visual features and employs building footprints to normalize the features for predicting building masks in the SAR image. We validate our method using a high resolution spotlight TerraSAR-X image collected over Berlin. Experimental results show that the proposed CG-Net effectively brings improvements with variant backbones. We further compare two representations of building footprints, namely complete building footprints and sensor-visible footprint segments, for our task, and conclude that the use of the former leads to better segmentation results. Moreover, we investigate the impact of inaccurate GIS data on our CG-Net, and this study shows that CG-Net is robust against positioning errors in GIS data. In addition, we propose an approach of ground truth generation of buildings from an accurate digital elevation model (DEM), which can be used to generate large-scale SAR image datasets. The segmentation results can be applied to reconstruct 3D building models at level-of-detail (LoD) 1, which is demonstrated in our experiments.

Highlights

  • V ERY-HIGH-RESOLUTION (VHR) synthetic aperture radar (SAR) imagery has attracted many researchers in Manuscript received May 29, 2020; revised September 18, 2020; accepted November 16, 2020

  • Improvements achieved by fully convolutional networks (FCN)-CG and DeepLabv3-CG demonstrate the

  • As can be seen, comparing to results using complete building footprints (CBF), the precision of the network trained on CBF-E is decreased by 3.02%, the F1 score is reduced by 3.62%, and the intersection over union (IoU) is decreased by 4.5%

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Summary

Introduction

V ERY-HIGH-RESOLUTION (VHR) synthetic aperture radar (SAR) imagery has attracted many researchers in Manuscript received May 29, 2020; revised September 18, 2020; accepted November 16, 2020. Modeling and characterization of objects of interest in urban environments [2]–[8], as it is able to provide data being independent of sun illumination and insensitive to weather conditions. Such data source is of interest to studies concerning areas frequently covered by clouds [9] and to applications of emergency response [10], [11]. The literature on retrieving information (e.g., footprint and height) from individual buildings on a large-scale VHR SAR image is still in its infancy.

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