Abstract

Change detection is an important task in the field of remote sensing. Various change detection methods based on convolutional neural networks (CNNs) have recently been proposed for remote sensing using satellite or aerial images. However, existing methods allow only the partial use of content information in images during change detection because they adopt simple feature similarity measurements or pixel-level loss functions to construct their network architectures. Therefore, when these methods are applied to complex urban areas, their performance in terms of change detection tends to be limited. In this article, a novel CNN-based change detection approach, referred to as a local similarity Siamese network (LSS-Net), with a cosine similarity measurement, was proposed for better urban land change detection in remote sensing images. To use content information on two sequential images, a new change attention map-based content loss function was developed in this study. In addition, to enhance the performance of the LSS-Net in terms of change detection, a suitable feature similarity measurement method, incorporated into a local similarity attention module, was determined through systemic experiments. To verify the change detection performance of the LSS-Net, it was compared with other state-of-the-art methods. The experimental results show that the proposed method outperforms the state-of-the-art methods in terms of the F1 score (0.9630, 0.9377, and 0.7751) and kappa (0.9581, 0.9351, and 0.7646) on the three test datasets, thus suggesting its potential for various remote sensing applications.

Highlights

  • Remote sensing has been widely used for highthroughput monitoring of areas that cannot be accessed non-intrusively [1]

  • We investigated the effect of a local similarity attention module and a decoder structure on change detection, showing that these utilities improve the performance of the deep learning network for such detection in two ways: 1) Through an ablation study, we determined a similarity measurement method suitable for change detection in urban areas and applied the method to the attention module

  • We proposed a novel local similarity Siamese network (LSS-Net) and a change attention map-based content loss function to improve the change detection in remote sensing images

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Summary

Introduction

Remote sensing has been widely used for highthroughput monitoring of areas that cannot be accessed non-intrusively [1]. Various studies have been conducted on the application of remote sensing techniques, such as remote sensing image classification and segmentation [2]–[6], to automatically obtain useful information of interest from. Choi and Jae Youn Hwang) remote sensing images. Change detection is one of the most important tasks in remote sensing imagery analysis [7]. Change detection has been applied to a wide range of applications, such as monitoring of changes in vegetation, urban expansion, agriculture, disasters, illegal woodcutting, and the melting of polar icecaps [8]–[11]

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