Abstract

Building Change Detection (BCD) is one of the core issues in earth observation and has received extensive attention in recent years. With the rapid development of earth observation technology, the data source of remote sensing change detection is continuously enriched, which provides the possibility to describe the spatial details of the ground objects more finely and to characterize the ground objects with multiple perspectives and levels. However, due to the different physical mechanisms of multi-source remote sensing data, BCD based on heterogeneous data is a challenge. Previous studies mostly focused on the BCD of homogeneous remote sensing data, while the use of multi-source remote sensing data and considering multiple features to conduct 2D and 3D BCD research is sporadic. In this article, we propose a novel and general squeeze-and-excitation W-Net, which is developed from U-Net and SE-Net. Its unique advantage is that it can not only be used for BCD of homogeneous and heterogeneous remote sensing data respectively but also can input both homogeneous and heterogeneous remote sensing data for 2D or 3D BCD by relying on its bidirectional symmetric end-to-end network architecture. Moreover, from a unique perspective, we use image features that are stable in performance and less affected by radiation differences and temporal changes. We innovatively introduced the squeeze-and-excitation module to explicitly model the interdependence between feature channels so that the response between the feature channels is adaptively recalibrated to improve the information mining ability and detection accuracy of the model. As far as we know, this is the first proposed network architecture that can simultaneously use multi-source and multi-feature remote sensing data for 2D and 3D BCD. The experimental results in two 2D data sets and two challenging 3D data sets demonstrate that the promising performances of the squeeze-and-excitation W-Net outperform several traditional and state-of-the-art approaches. Moreover, both visual and quantitative analyses of the experimental results demonstrate competitive performance in the proposed network. This demonstrates that the proposed network and method are practical, physically justified, and have great potential application value in large-scale 2D and 3D BCD and qualitative and quantitative research.

Highlights

  • Change detection is a process of qualitatively and quantitatively analyzing and determining changes on the earth’s surface in different time dimensions

  • The available data types for change detection have expanded from the medium- and low-resolution optical remote sensing images to high resolution or very high resolution (HR/VHR) optical remote sensing images, light detection and ranging (LiDAR), or synthetic aperture radar (SAR) data

  • To validate the effectiveness of the proposed squeeze-and-excitation W-Net. This paper evaluated it from two perspectives: (1) calculate the overall accuracy (OA), F_1 value, missing alarm (MA), and false alarm (FA) based on reference data to evaluate the network’s ability to detect buildings; (2) compared with some widely used change detection methods, including RCVA, support vector machine (SVM), random forest (RF), deep belief network (DBN), U-Net, SegNet, and DeepLabv3+

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Summary

A Novel Squeeze-and-Excitation W-Net for 2D and 3D Building

Haiming Zhang 1 , Mingchang Wang 1,2, * , Fengyan Wang 1 , Guodong Yang 1 , Ying Zhang 1 , Junqian Jia 1 and Siqi Wang 1,3. Xi’an Center of Mineral Resources Survey, China Geological Survey, Xi’an 710100, China

Introduction
Methodology
Bilaterally Symmetrical End-to-End Network Architecture
Squeeze-and-Excitation W-Net
Multi-Feature
GLCM for Texture Features Extraction
Edge Detection Operator for Shape Features Extraction
Combine Multiple
Accuracy Assessment
Comparison with Ground Truth Data
Comparison with Other Methods
Datasets for 2D Experiments
Datasets
Network
Methods
Details of experiment
Details
Discussion
Comparison with Previous Studies
Analysis of Network Models
13. Validation accuracy and and loss loss curve curve of for experiment
The Effect of Multi-Feature
Findings
16. Histograms
Conclusions
Full Text
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