Abstract

Remote sensing image change detection (CD) is an important task in remote sensing image analysis and is essential for an accurate understanding of changes in the Earth’s surface. The technology of deep learning (DL) is becoming increasingly popular in solving CD tasks for remote sensing images. Most existing CD methods based on DL tend to use ordinary convolutional blocks to extract and compare remote sensing image features, which cannot fully extract the rich features of high-resolution (HR) remote sensing images. In addition, most of the existing methods lack robustness to pseudochange information processing. To overcome the above problems, in this article, we propose a new method, namely MRA-SNet, for CD in remote sensing images. Utilizing the UNet network as the basic network, the method uses the Siamese network to extract the features of bitemporal images in the encoder separately and perform the difference connection to better generate difference maps. Meanwhile, we replace the ordinary convolution blocks with Multi-Res blocks to extract spatial and spectral features of different scales in remote sensing images. Residual connections are used to extract additional detailed features. To better highlight the change region features and suppress the irrelevant region features, we introduced the Attention Gates module before the skip connection between the encoder and the decoder. Experimental results on a public dataset of remote sensing image CD show that our proposed method outperforms other state-of-the-art (SOTA) CD methods in terms of evaluation metrics and performance.

Highlights

  • We propose a new end-to-end convolutional neural network (CNN) network architecture, MRA-SNet, for remote sensing image change detection (CD), which uses Multi-Res blocks to extract feature information at different scales of images and improve the accuracy of CD

  • Inspired by the application of deep learning (DL) technology to CD tasks, we propose a novel end-to-end remote sensing image CD network structure named MRA-SNet for remote sensing image CD

  • We added the Attention Gates module before the skip connection between the encoder and decoder, and the Attention Gates module can better focus on the changing features and supinformation

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Summary

Introduction

Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. The Earth is changing all the time due to human activities and natural forces. To better record and study the changes occurring on the Earth’s surface, remote sensing imaging technology monitors the Earth’s surface in real time and collects a large amount of remote sensing image data. Remote sensing images have important research significance for human beings to understand the impact of their own activities on the Earth’s surface changes in time [1,2]

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