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3 months ago

HCGMNET: A Hierarchical Change Guiding Map Network For Change Detection

Chengxi Han Chen Wu Bo Du

HCGMNET: A Hierarchical Change Guiding Map Network For Change Detection

Abstract

Very-high-resolution (VHR) remote sensing (RS) image change detection (CD) has been a challenging task for its very rich spatial information and sample imbalance problem. In this paper, we have proposed a hierarchical change guiding map network (HCGMNet) for change detection. The model uses hierarchical convolution operations to extract multiscale features, continuously merges multi-scale features layer by layer to improve the expression of global and local information, and guides the model to gradually refine edge features and comprehensive performance by a change guide module (CGM), which is a self-attention with changing guide map. Extensive experiments on two CD datasets show that the proposed HCGMNet architecture achieves better CD performance than existing state-of-the-art (SOTA) CD methods.

Code Repositories

ChengxiHAN/HCGMNet-CD
Official
pytorch

Benchmarks

BenchmarkMethodologyMetrics
change-detection-on-cdd-dataset-season-1HCGMNet
F1: 95.07
F1-Score: 95.07
IoU: 90.60
KC: 94.40
Overall Accuracy: 98.82
Precision: 93.84
Recall: 96.34
change-detection-on-dsifn-cdHCGMNet
F1: 55.00
IoU: 37.93
KC: 41.53
Overall Accuracy: 76.26
Precision: 40.57
Recall: 85.35
change-detection-on-googlegz-cdHCGMNet
F1: 85.71
IoU: 74.99
KC: 80.94
Overal Accuracy: 92.85
Precision: 84.25
Recall: 87.22
change-detection-on-levirHCGMNet
F1: 82.37
IoU: 70.03
KC: 81.63
OA: 98.57
Prcision: 82.81
Recall: 81.94
change-detection-on-levir-cdHCGMNet
F1: 91.77
F1-score: 91.77
IoU: 84.79
Overall Accuracy: 99.18
Precision: 92.96
Recall: 90.61
change-detection-on-s2lookingHCGMNet
F1: 63.87
F1-Score: 63.87
IoU: 46.91
KC: 63.48
OA: 99.22
Precision: 72.51
Recall: 57.06
change-detection-on-sysu-cdHCGMNet
F1: 79.76
IoU: 66.33
KC: 74.11
OA: 91.12
Precision: 86.28
Recall: 74.15
change-detection-on-whu-cdHCGMNet
F1: 92.08
IoU: 85.33
KC: 91.80
Overall Accuracy: 99.45
Precision: 93.93
Recall: 90.31

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HCGMNET: A Hierarchical Change Guiding Map Network For Change Detection | Papers | HyperAI