Abstract

The diversity of change detection (CD) methods and the limitations in generalizing these techniques using different types of remote sensing datasets over various study areas have been a challenge for CD applications. Additionally, most CD methods have been implemented in two intensive and time-consuming steps: (a) predicting change areas, and (b) decision on predicted areas. In this study, a novel CD framework based on the convolutional neural network (CNN) is proposed to not only address the aforementioned problems but also to considerably improve the level of accuracy. The proposed CNN-based CD network contains three parallel channels: the first and second channels, respectively, extract deep features on the original first- and second-time imagery and the third channel focuses on the extraction of change deep features based on differencing and staking deep features. Additionally, each channel includes three types of convolution kernels: 1D-, 2D-, and 3D-dilated-convolution. The effectiveness and reliability of the proposed CD method are evaluated using three different types of remote sensing benchmark datasets (i.e., multispectral, hyperspectral, and Polarimetric Synthetic Aperture RADAR (PolSAR)). The results of the CD maps are also evaluated both visually and statistically by calculating nine different accuracy indices. Moreover, the results of the CD using the proposed method are compared to those of several state-of-the-art CD algorithms. All the results prove that the proposed method outperforms the other remote sensing CD techniques. For instance, considering different scenarios, the Overall Accuracies (OAs) and Kappa Coefficients (KCs) of the proposed CD method are better than 95.89% and 0.805, respectively, and the Miss Detection (MD) and the False Alarm (FA) rates are lower than 12% and 3%, respectively.

Highlights

  • IntroductionThe Earth’s surface is constantly changing due to numerous factors, such as natural events (e.g., earthquakes and floods) and human activities (e.g., urban development) [1,2]

  • The Earth’s surface is constantly changing due to numerous factors, such as natural events and human activities [1,2]

  • A novel End-to-End framework based on deep learning was proposed for Change detection (CD) in remote sensing datasets

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Summary

Introduction

The Earth’s surface is constantly changing due to numerous factors, such as natural events (e.g., earthquakes and floods) and human activities (e.g., urban development) [1,2]. The detection of these changes is necessary for better management of resources [3]. RS imagery can cover a wide area at different times and can be acquired in a very cost- and time-efficient manner [5]. Change detection (CD) using RS methods refers to the process of measuring the difference in objects in the same region of interest over time using earth observation imagery. The accurate CD remains challenging, and, the development of more accurate CD methods using the most recent image processing and machine learning algorithms is required

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