Chengxi Han, Chen Wu, Bo Du
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.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Change Detection | SYSU-CD | F1 | 79.76 | HCGMNet |
| Change Detection | SYSU-CD | IoU | 66.33 | HCGMNet |
| Change Detection | SYSU-CD | KC | 74.11 | HCGMNet |
| Change Detection | SYSU-CD | OA | 91.12 | HCGMNet |
| Change Detection | SYSU-CD | Precision | 86.28 | HCGMNet |
| Change Detection | SYSU-CD | Recall | 74.15 | HCGMNet |
| Change Detection | GoogleGZ-CD | F1 | 85.71 | HCGMNet |
| Change Detection | GoogleGZ-CD | IoU | 74.99 | HCGMNet |
| Change Detection | GoogleGZ-CD | KC | 80.94 | HCGMNet |
| Change Detection | GoogleGZ-CD | Overal Accuracy | 92.85 | HCGMNet |
| Change Detection | GoogleGZ-CD | Precision | 84.25 | HCGMNet |
| Change Detection | GoogleGZ-CD | Recall | 87.22 | HCGMNet |
| Change Detection | LEVIR+ | F1 | 82.37 | HCGMNet |
| Change Detection | LEVIR+ | IoU | 70.03 | HCGMNet |
| Change Detection | LEVIR+ | KC | 81.63 | HCGMNet |
| Change Detection | LEVIR+ | OA | 98.57 | HCGMNet |
| Change Detection | LEVIR+ | Prcision | 82.81 | HCGMNet |
| Change Detection | LEVIR+ | Recall | 81.94 | HCGMNet |
| Change Detection | DSIFN-CD | F1 | 55 | HCGMNet |
| Change Detection | DSIFN-CD | IoU | 37.93 | HCGMNet |
| Change Detection | DSIFN-CD | KC | 41.53 | HCGMNet |
| Change Detection | DSIFN-CD | Overall Accuracy | 76.26 | HCGMNet |
| Change Detection | DSIFN-CD | Precision | 40.57 | HCGMNet |
| Change Detection | DSIFN-CD | Recall | 85.35 | HCGMNet |
| Change Detection | WHU-CD | F1 | 92.08 | HCGMNet |
| Change Detection | WHU-CD | IoU | 85.33 | HCGMNet |
| Change Detection | WHU-CD | KC | 91.8 | HCGMNet |
| Change Detection | WHU-CD | Overall Accuracy | 99.45 | HCGMNet |
| Change Detection | WHU-CD | Precision | 93.93 | HCGMNet |
| Change Detection | WHU-CD | Recall | 90.31 | HCGMNet |
| Change Detection | LEVIR-CD | F1 | 91.77 | HCGMNet |
| Change Detection | LEVIR-CD | F1-score | 91.77 | HCGMNet |
| Change Detection | LEVIR-CD | IoU | 84.79 | HCGMNet |
| Change Detection | LEVIR-CD | Overall Accuracy | 99.18 | HCGMNet |
| Change Detection | LEVIR-CD | Precision | 92.96 | HCGMNet |
| Change Detection | LEVIR-CD | Recall | 90.61 | HCGMNet |
| Change Detection | S2Looking | F1 | 63.87 | HCGMNet |
| Change Detection | S2Looking | F1-Score | 63.87 | HCGMNet |
| Change Detection | S2Looking | IoU | 46.91 | HCGMNet |
| Change Detection | S2Looking | KC | 63.48 | HCGMNet |
| Change Detection | S2Looking | OA | 99.22 | HCGMNet |
| Change Detection | S2Looking | Precision | 72.51 | HCGMNet |
| Change Detection | S2Looking | Recall | 57.06 | HCGMNet |
| Change Detection | CDD Dataset (season-varying) | F1 | 95.07 | HCGMNet |
| Change Detection | CDD Dataset (season-varying) | F1-Score | 95.07 | HCGMNet |
| Change Detection | CDD Dataset (season-varying) | IoU | 90.6 | HCGMNet |
| Change Detection | CDD Dataset (season-varying) | KC | 94.4 | HCGMNet |
| Change Detection | CDD Dataset (season-varying) | Overall Accuracy | 98.82 | HCGMNet |
| Change Detection | CDD Dataset (season-varying) | Precision | 93.84 | HCGMNet |
| Change Detection | CDD Dataset (season-varying) | Recall | 96.34 | HCGMNet |