Abstract

Very high resolution (VHR) images change detection plays an important role in many remote sensing applications, such as military reconnaissance, urban planning and natural resource monitoring. Recently, fully connected conditional random field (FCCRF)-facilitated deep convolutional neural networks have shown promising results in change detection. However, the FCCRF in change detection currently is still postprocessing based on the output of the front-end network, which is not a convenient end-to-end network model and cannot combine front-end network knowledge with the knowledge of pairwise potential. Therefore, we propose a new end-to-end deep Siamese pairwise potential CRFs network (PPNet) for VHR images change detection. Specifically, this method adds a conditional random field recurrent neural network (CRF-RNN) unit into the convolutional neural network and integrates the knowledge of unary potential and pairwise potential in the end-to-end training process, aiming to refine the edges of changed areas and to remove the distant noise. In order to correct the front-end network identification errors, the method uses effective channel attention (ECA) to further effectively distinguish the change areas. Our experimental results on two data sets verify that the proposed method has more advanced capability with almost no increase in the number of parameters and effectively avoids the overfitting phenomenon in the training process.

Highlights

  • Change detection has been one of the important research directions of remote sensing imagery processing

  • About the OA and F1 coefficient, four indexes are used: (1) true positives (TP), the number of correctly detected changed pixels; (2) true negatives (TN), the number of correctly detected unchanged pixels; (3) false positives (FP), the number of unchanged pixels that are incorrectly detected as changed pixels; and (4) false negatives (FN), the number of changed pixels that are incorrectly detected as unchanged pixels

  • Based on DSMS-FCN, we compare the performance of DSMS-FCN-fully connected conditional random field (FCCRF), DSMS-FCN-effective channel attention (ECA) and pairwise potential conditional random fields (CRF) network (PPNet) (DSMS-FCN-ECA joined with conditional random field recurrent neural network (CRF-RNN)), respectively, to reflect the role of ECA units and CRF-RNN unit intuitively

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Summary

Introduction

Change detection has been one of the important research directions of remote sensing imagery processing. The filter bandwidths and category compatibility coefficients in the traditional FCCRF are often set through manual experience and grid search, while in the end-to-end change detection convolutional neural network, they are learned through training, which further increases the generalization ability of the method. This method is the first to verify the effectiveness of ECA in the application of change detection; Our experimental results on two data sets verify that this method has advanced capability in the same kind of methods This method improves the capability of change detection without increasing the number of parameters and avoids the overfitting phenomenon in the training process. In this paper, focusing on VHR images, we propose a new end-to-end deep Siamese pairwise potential CRFs network for change detection.

Methodology
CRF-RNN Unit
ECA Unit
VHR Images Change Detection Algorithm Based on PPNet
End-to-End Training
Results
Data Sets
Evaluation Indexes
Parameter Settings
Comparison Results
Method
Failure Cases
Ablation Study
Parameters Selection in CRF-RNN Unit
Comparative Study with SE Attention
Comparison of the Total Number of Network Parameters
Conclusions
Full Text
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