Beyond Classifiers: Remote Sensing Change Detection with Metric Learning
Abstract
:1. Introduction
- We remove classifiers in change detection networks and propose a strong baseline with modified contrastive loss.
- We improve the contrastive loss with triplet loss by searching for triplet pairs in changed and unchanged regions. We further transfer triplet metric learning to semantic change detection. Since multiple classes are provided, we conduct more triplet pairs. To our knowledge, this is the first time triplet loss has been used in change detection both spatially and temporally.
- Extensive experiments have confirmed the effectiveness of our contrastive loss baseline and triplet loss in binary and semantic change detection.
2. Related Work
2.1. Binary Change Detection
2.1.1. Feature Extraction
2.1.2. Classifier-Based Methods
2.1.3. Metric-Based Methods
2.1.4. Contrastive Learning Methods
2.2. Semantic Change Detection
2.3. Metric Learning
3. Change Detection by Metric Learning
3.1. Framework
3.2. Basic Concept
3.2.1. Definition
3.2.2. Loss Functions
3.3. Contrastive Loss Baseline
3.3.1. Naive Contrastive Loss
3.3.2. Balanced Contrastive Loss
3.3.3. Probability Contrastive Loss
3.3.4. Revert Contrastive Loss
3.3.5. Hard Mining
3.3.6. Overall Loss Function
3.4. Triplet Loss
3.4.1. Triplet Loss in Changed Region
- Anchor: pixel embedding at location (i, j) in the changed contour from phase 1.
- Positive: pixel embedding at location (e, f) in the changed contour from phase 1.
- Negative: pixel embedding at location (i, j) in the changed contour from phase 2.
3.4.2. Triplet Loss in Unchanged Region
- Anchor: pixel embedding at location (i, j) in the unchanged region from phase 1.
- Positive: pixel embedding at location (i, j) in the unchanged region from phase 2.
- Negative: pixel embedding at location (i, j) from the random image.
3.4.3. Triplet Pairs in Semantic Change Detection
- Anchor: pixel embedding at location (i, j) in the changed region from phase 1.
- Positive: pixel embedding at location (e, f) in the changed region from phase 1, with the same semantic label as Anchor.
- Negative: pixel embedding at location (u, v) in the changed region from phase 2, with different semantic labels from Anchor.
3.4.4. Overall Loss Function
4. Experiments
4.1. Datasets
4.2. Implementation Details
4.3. Binary Change Detection Results
4.4. Semantic Change Detection Results
4.5. Ablation Study
4.5.1. Contrastive Loss Baseline
4.5.2. Two Sources of Triplet Pairs
4.5.3. Embedding Visualization
5. Discussion
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Method | LEVIR-CD | SYSU-CD | ||||||
---|---|---|---|---|---|---|---|---|
Precision | Recall | F1 | IoU | Precision | Recall | F1 | IoU | |
FC-EF [5] | 86.91 | 80.17 | 83.40 | 71.53 | 74.32 | 75.84 | 75.07 | 60.09 |
FC-Siam-Di [5] | 89.53 | 83.31 | 86.31 | 75.92 | 89.13 | 61.21 | 72.57 | 56.96 |
FC-Siam-Conc [5] | 91.99 | 76.77 | 83.69 | 71.96 | 82.54 | 71.03 | 76.35 | 61.75 |
DTCDSCN [66] | 88.53 | 86.83 | 87.67 | 78.05 | 83.45 | 73.77 | 78.31 | 64.35 |
STANet [7] | 83.81 | 91.00 | 87.26 | 77.40 | 70.76 | 85.33 | 77.37 | 63.09 |
IFNet [28] | 94.02 | 82.93 | 88.13 | 78.77 | 84.30 | 72.69 | 78.06 | 64.02 |
SNUNet [67] | 89.18 | 87.17 | 88.16 | 78.83 | 83.72 | 73.74 | 78.42 | 64.50 |
BIT [6] | 89.24 | 89.37 | 89.31 | 80.68 | 84.15 | 74.25 | 78.89 | 65.14 |
DSAMNet [2] | 91.70 | 86.77 | 89.17 | 80.45 | 74.81 | 81.86 | 78.18 | 64.18 |
ours baseline | 90.03 | 90.77 | 90.40 | 82.48 | 81.94 | 77.28 | 79.54 | 65.67 |
ours | 90.64 | 91.89 | 91.26 | 83.92 | 82.75 | 79.27 | 80.97 | 68.03 |
Method | Accuracy | |||
---|---|---|---|---|
OA (%) | mIoU (%) | Sek (%) | (%) | |
FC-EF [5] | 85.18 | 64.25 | 9.98 | 48.45 |
UNet++ [27] | 85.18 | 63.83 | 9.90 | 48.04 |
HRSCD-str.2 [42] | 85.49 | 64.43 | 10.69 | 49.22 |
ResNet-GRU [23] | 85.09 | 60.64 | 8.99 | 45.89 |
ResNet-LSTM [23] | 86.77 | 67.16 | 15.96 | 56.90 |
FC-Siam-conv. [5] | 86.92 | 68.86 | 16.36 | 56.41 |
FC-Siam-diff [5] | 86.86 | 68.96 | 16.25 | 56.20 |
IFNet [28] | 86.47 | 68.45 | 14.25 | 53.54 |
HRSCD-str.3 [42] | 84.62 | 66.33 | 11.97 | 51.62 |
HRSCD-str.4 [42] | 86.62 | 71.15 | 18.80 | 58.21 |
Bi-SRNet [43] | 87.84 | 73.41 | 23.22 | 62.61 |
ours | 88.16 | 73.77 | 23.84 | 63.15 |
Method | LEVIR-CD | SYSU-CD | ||
---|---|---|---|---|
F1 | IoU | F1 | IoU | |
Naive | 88.77 | 79.23 | 77.78 | 63.67 |
Balanced | 88.76 | 80.15 | 78.14 | 64.11 |
Probability | 90.01 | 82.18 | 79.24 | 65.17 |
Revert | 90.20 | 82.28 | 79.14 | 65.04 |
Revert+Mining | 90.40 | 82.48 | 79.54 | 65.67 |
Method | LEVIR-CD | SYSU-CD | ||
---|---|---|---|---|
F1 | IoU | F1 | IoU | |
baseline | 90.40 | 82.48 | 79.54 | 65.67 |
Triplet in Changed | 90.62 | 82.71 | 79.85 | 65.89 |
Triplet in Unchanged | 90.99 | 83.48 | 80.51 | 67.87 |
Triplet from two sources | 91.26 | 83.92 | 80.97 | 68.03 |
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Zhang, Y.; Li, W.; Wang, Y.; Wang, Z.; Li, H. Beyond Classifiers: Remote Sensing Change Detection with Metric Learning. Remote Sens. 2022, 14, 4478. https://doi.org/10.3390/rs14184478
Zhang Y, Li W, Wang Y, Wang Z, Li H. Beyond Classifiers: Remote Sensing Change Detection with Metric Learning. Remote Sensing. 2022; 14(18):4478. https://doi.org/10.3390/rs14184478
Chicago/Turabian StyleZhang, Yuqi, Wei Li, Yaohua Wang, Zhibin Wang, and Hao Li. 2022. "Beyond Classifiers: Remote Sensing Change Detection with Metric Learning" Remote Sensing 14, no. 18: 4478. https://doi.org/10.3390/rs14184478