Abstract

Deep learning (DL) algorithms are considered as a methodology of choice for remote-sensing image analysis over the past few years. Due to its effective applications, deep learning has also been introduced for automatic change detection and achieved great success. The present study attempts to provide a comprehensive review and a meta-analysis of the recent progress in this subfield. Specifically, we first introduce the fundamentals of deep learning methods which are frequently adopted for change detection. Secondly, we present the details of the meta-analysis conducted to examine the status of change detection DL studies. Then, we focus on deep learning-based change detection methodologies for remote sensing images by giving a general overview of the existing methods. Specifically, these deep learning-based methods were classified into three groups; fully supervised learning-based methods, fully unsupervised learning-based methods and transfer learning-based techniques. As a result of these investigations, promising new directions were identified for future research. This study will contribute in several ways to our understanding of deep learning for change detection and will provide a basis for further research. Some source codes of the methods discussed in this paper are available from: https://github.com/lazharkhelifi/deeplearning_changedetection_remotesensing_review.

Highlights

  • Deep learning (DL) has seen an increasing trend and a great interest over the past decade due to its powerful ability to represent learning

  • We provide a technical review of these studies that shed more light on the advance of deep learning for change detection

  • PROMISING RESEARCH DIRECTIONS To advance the progress of the change detection task, we suggest two important directions for research, deep reinforcement learning and weakly supervised change detection

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Summary

Introduction

Deep learning (DL) has seen an increasing trend and a great interest over the past decade due to its powerful ability to represent learning. Deep learning allows models that are built, based on multiple processing layers, to learn representations of data samples with several levels of abstraction [1]. Deep learning enables models that are composed, based on multiple layers, to learn representations of data samples with several ranges of abstraction levels [1]. The science of remote sensing (RS) has seen a massive increase in the generation and enhancement of digital images captured from airplanes or satellites that cover almost each angle of the surface of the earth This growth in data has pushed the community of the geoscience and remote sensing (RS) to apply deep learning algorithms to solve different remote sensing tasks.

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