Abstract

Change detection for remote sensing images is an indispensable procedure for many remote sensing applications, such as geological disaster assessment, environmental monitoring, and urban development monitoring. Through this technique, the difference in certain areas after some emergencies can be determined to estimate their influence. Additionally, by analyzing the sequential difference maps, the change tendency can be found to help to predict future changes, such as urban development and environmental pollution. The complex variety of changes and interferential changes caused by imaging processing, such as season, weather and sensors, are critical factors that affect the effectiveness of change detection methods. Recently, there have been many research achievements surrounding this topic, but a perfect solution to all the problems in change detection has not yet been achieved. In this paper, we mainly focus on reducing the influence of imaging processing through the deep neural network technique with limited labeled samples. The attention-guided Siamese fusion network is constructed based on one basic Siamese network for change detection. In contrast to common processing, besides high-level feature fusion, feature fusion is operated during the whole feature extraction process by using an attention information fusion module. This module can not only realize the information fusion of two feature extraction network branches, but also guide the feature learning network to focus on feature channels with high importance. Finally, extensive experiments were performed on three public datasets, which could verify the significance of information fusion and the guidance of the attention mechanism during feature learning in comparison with related methods.

Highlights

  • The development of remote sensing techniques increases the sensory ability of humans to their living environment without the limitations of space and time

  • Ground truthing conducted by humans tends to mark the changes to nature made by humans, such as industrial development and housing construction, which is very important for urban development monitoring or the research of land use

  • Siam-ResNet-CD, were considered to verify the performance of the proposed method. These methods were trained under the same experimental setting to achieve the best results for comparison, except DNN-CD trained the network to use whole labeled samples obtained through pre-classification

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Summary

Introduction

The development of remote sensing techniques increases the sensory ability of humans to their living environment without the limitations of space and time. In contrast to unsupervised methods, supervised neural network-based methods utilize label information to improve the final classification, which only focuses on distinguishing specific change types from a whole scene. For this kind of method, change detection is mainly treated as a pixel classification problem or semantic segmentation problem. In [58], authors combined the convolutional neural network with the CBAM attention mechanism to improve the performance of feature learning for SAR image change detection. The attention-guided Siamese fusion network is proposed for the change detection of remote sensing images.

The Proposed Method
Basic Siamese Fusion Network
Network Architecture of Atten-SiamNet-CD
Experimental Results
Introduction of Datasets and Experimental Setting
Experiments about
Analysis of Image Patch Size
Analysis
Comparison with Other Methods
Results for SZTAKI AirChange Benchmark
Results of QuickBird Dataset
Results for Shu Guang Village Data
Conclusions
Full Text
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