Abstract

With the rapid development of remote sensing technology, change detection (CD) methods based on remote sensing images have been widely used in land resource planning, disaster monitoring, and urban expansion, among other fields. The purpose of CD is to accurately identify changes on the Earth's surface. However, most CD methods focus on changes between the pixels of multitemporal remote sensing image pairs while ignoring the coupled relationships between them. This often leads to uncertainty about edge pixels with regard to changing objects and misclassification of small objects. To solve these problems, we propose a CD method for remote sensing images that uses a coupled dictionary and deep learning. The proposed method realizes the spatial-temporal modeling and correlation of multitemporal remote sensing images through a coupled dictionary learning module and ensures the transferability of reconstruction coefficients between multisource image blocks. In addition, we constructed a differential feature discriminant network to calculate the dissimilarity probability for the change area. A new loss function that considers true/false discrimination loss, classification loss, and cross-entropy loss is proposed. The most discriminating features can be extracted and used for CD. The performance of the proposed method was verified on two well-known CD datasets. Extensive experimental results show that the proposed method is superior to other methods in terms of precision, recall, F1-score, IoU, and OA.

Highlights

  • In 1858, the first remote sensing image was taken over Paris, France

  • The quantitative results in terms of the five quantitative evaluation metrics listed in Table 2 show that the proposed method achieved excellent performance in terms of precision, recall, F1-score, IoU, and OA. e OA of the proposed method was 0.883, which is 0.02 higher than that of the GANs method. e accuracy value was significantly improved compared with the other methods

  • We proposed a change detection (CD) method for multisource remote sensing images using a coupled dictionary and deep learning

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Summary

Introduction

Human’s cognition of the Earth has entered a new stage from local to large-scale surface observation as a result of remote sensing technology on various platforms. With the rapid development of sensor and information technology, it has become possible to acquire and store large amounts of remote sensing images. Remote sensing images provide extensive Earth observational data that are characterized by high precision, wide range, and short period, offering important data support for the military, science, agriculture, environment, resources, transportation, and urban management [1]. With the development of remote sensing image CD technology, new CD methods continue to emerge, many new problems and challenges have arisen due to improvements in imaging ability and different properties of sensors.

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