AL-MRIS: An Active Learning-Based Multipath Residual Involution Siamese Network for Few-Shot Hyperspectral Image Classification
Abstract
:1. Introduction
- An active learning-based multipath residual involution Siamese network for few-shot HSI classification, AL-MRIS, is proposed. In the AL-MRIS method, the multipath residual involution (MRIN) module can comprehensively consider the local features, dynamic features and global features of HSIs. Moreover, to address the sample scarcity problem, the AL strategy is integrated into the Siamese network to make the training samples more representative to improve the classification performance.
- An AL-based Siamese network framework is constructed. The Siamese network can extract information beyond labels from the data itself, thereby achieving better classification performance, especially for few-shot training samples. Moreover, by integrating with AL, representative samples can be selected more effectively, thus improving the ability of the Siamese network to discriminate features while reducing the practical labeling cost.
- The multipath residual involution (MRIN) module is proposed. The MRIN module captures fine-grained features via an involution operation and effectively aggregates the contextual semantic information of the HSI through dynamic weights. Moreover, the MRIN module comprehensively considers local features, dynamic features and global features through multipath residual connections, which improves the representation ability of HSIs.
- A cosine distance-based contrastive loss (CD loss) for Siamese networks is proposed. The CD loss utilizes the directional similarity of high-dimensional HSI data and improves the discriminability of the Siamese classification network.
2. Related Works
2.1. Involution Network
2.2. Siamese Network
3. Our Proposed AL-MRIS Method
3.1. The Multipath Residual Involution (MRIN) Module
3.2. AL-Based Siamese Network
3.2.1. Construct Sample Pairs Based on the Training Sample Set
3.2.2. Siamese Network Learning Using the Training Set
3.2.3. AL Selecting Newly Labeled Training Samples
3.2.4. Updating the Training Set
4. Experiments and Results
4.1. Datasets
4.2. Evaluation Metrics
4.3. Comparison of Different Classification Methods
4.4. Parameter Discussions
4.4.1. Impacts of the MRIN Module Number
4.4.2. Comparison of Different Distance-Based Contrast Losses
4.4.3. Influences of Different Training Sample Numbers
4.4.4. Ablation Experiments
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Label | Class | #Number |
---|---|---|
1 | Asphalt | 6631 |
2 | Meadows | 18,649 |
3 | Gravel | 2099 |
4 | Trees | 3064 |
5 | Painted metal sheets | 1345 |
6 | Bare Soil | 5029 |
7 | Bitumen | 1330 |
8 | Self-Blocking Bricks | 3682 |
9 | Shadows | 947 |
Total (9 classes) | 42,776 |
Label | Class | #Number |
---|---|---|
1 | Alfalfa | 40 |
2 | Corn–notill | 1428 |
3 | Corn–mintill | 830 |
4 | Corn | 237 |
5 | Grass–pasture | 483 |
6 | Grass–trees | 730 |
7 | Grass–pasture–mowed | 28 |
8 | Hay–windrowed | 478 |
9 | Oats | 20 |
10 | Soybean–notill | 972 |
11 | Soybean–mintill | 2455 |
12 | Soybean–clean | 593 |
13 | Wheat | 205 |
14 | Woods | 1265 |
15 | Buildings–Grass–Trees–Drives | 386 |
16 | Stone–Steel–Towers | 93 |
Total (16 classes) | 10,249 |
Label | Class | #Number |
---|---|---|
1 | Brocoli_green_weeds_1 | 2006 |
2 | Brocoli_green_weeds_2 | 3723 |
3 | Fallow | 1973 |
4 | Fallow_rough_plow | 1391 |
5 | Fallow_smooth | 2675 |
6 | Stubble | 3956 |
7 | Celery | 3576 |
8 | Grapes_untrained | 11,268 |
9 | Soil_vinyard_develop | 6200 |
10 | Corn_senesced_green_weeds | 3275 |
11 | Lettuce_romaine_4wk | 1065 |
12 | Lettuce_romaine_5wk | 1924 |
13 | Lettuce_romaine_6wk | 913 |
14 | Lettuce_romaine_7wk | 1067 |
15 | Vinyard_untrained | 7265 |
16 | Vinyard_vertical_trellis | 1804 |
Total (16 classes) | 54,081 |
DRIN | Sia-3DCNN | 3DCSN | S3Net | ALPN | FAAL | CFSL | Gia-CFSL | Proposed AL-MRIS | |
---|---|---|---|---|---|---|---|---|---|
OA (%) | 72.06 ± 4.59 | 63.73 ± 6.19 | 65.27 ± 5.01 | 75.24 ± 6.42 | 69.19 ± 8.29 | 37.18 ± 7.68 | 79.37 ± 1.05 | 73.58 ± 3.47 | 84.71 ± 3.58 |
AA (%) | 80.42 ± 2.49 | 68.09 ± 4.47 | 71.99 ± 3.08 | 81.75 ± 3.67 | 71.54 ± 8.29 | 23.82 ± 7.86 | 81.07 ± 2.13 | 74.97 ± 1.20 | 82.27 ± 5.07 |
Kappa × 100 | 65.70 ± 4.99 | 52.65 ± 7.96 | 57.78 ± 6.41 | 68.83 ± 7.18 | 61.29 ± 5.65 | 38.46 ± 5.01 | 74.29 ± 1.94 | 65.97 ± 3.79 | 79.81 ± 4.71 |
Asphalt | 87.02 | 65.51 | 68.88 | 63.99 | 54.13 | 5.35 | 62.02 | 73.31 | 93.49 |
Meadows | 41.75 | 25.53 | 66.12 | 74.20 | 74.27 | 23.51 | 82.64 | 68.35 | 82.01 |
Gravel | 64.02 | 67.55 | 73.95 | 79.76 | 82.37 | 76.65 | 77.93 | 87.58 | 55.56 |
Trees | 87.97 | 59.26 | 65.59 | 70.81 | 93.39 | 2.23 | 75.81 | 73.71 | 80.92 |
Painted metal sheets | 96.34 | 100 | 98.95 | 95.97 | 99.70 | 99.08 | 99.32 | 99.92 | 100 |
Bare Soil | 80.00 | 69.11 | 86.64 | 77.79 | 82.12 | 81.32 | 82.40 | 85.35 | 100 |
Bitumen | 60.28 | 88.62 | 97.89 | 89.74 | 93.28 | 100 | 93.51 | 96.75 | 96.83 |
Self-Blocking Bricks | 99.13 | 36.62 | 56.71 | 35.23 | 69.40 | 8.56 | 42.42 | 54.96 | 94.45 |
Shadows | 98.83 | 64.08 | 54.23 | 79.74 | 58.81 | 1.61 | 56.68 | 60.51 | 74.89 |
DRIN | Sia-3DCNN | 3DCSN | S3Net | ALPN | FAAL | CFSL | Gia-CFSL | Proposed AL-MRIS | |
---|---|---|---|---|---|---|---|---|---|
OA (%) | 63.91 ± 3.28 | 50.34 ± 2.81 | 59.62 ± 3.20 | 66.66 ± 1.88 | 60.98 ± 1.09 | 32.42 ± 4.26 | 68.47 ± 2.79 | 56.00 ± 5.62 | 75.31 ± 2.09 |
AA (%) | 78.16 ± 1.67 | 64.84 ± 3.49 | 74.33 ± 2.47 | 79.66 ± 2.35 | 69.49 ± 1.38 | 45.28 ± 3.21 | 77.13 ± 2.43 | 68.62 ± 3.48 | 78.69 ± 2.09 |
Kappa × 100 | 56.87 ± 3.42 | 44.68 ± 2.94 | 54.83 ± 3.49 | 62.85 ± 2.05 | 55.71 ± 1.29 | 52.92 ± 3.65 | 64.84 ± 2.56 | 50.60 ± 5.97 | 71.86 ± 2.26 |
Alfalfa | 100 | 90.69 | 97.67 | 100 | 100 | 72.09 | 83.72 | 95.34 | 100 |
Corn-notill | 30.31 | 39.92 | 31.01 | 55.12 | 39.18 | 29.37 | 53.89 | 59.37 | 72.75 |
Corn-mintill | 57.67 | 21.88 | 61.54 | 54.17 | 22.88 | 2.52 | 81.98 | 77.53 | 69.93 |
Corn | 100 | 54.27 | 90.17 | 82.48 | 75.53 | 20.08 | 38.88 | 94.44 | 97.31 |
Grass-pasture | 63.12 | 60.41 | 64.58 | 84.61 | 69.10 | 10.98 | 71.45 | 65.62 | 91.68 |
Grass-trees | 95.59 | 93.94 | 91.61 | 91.75 | 95.59 | 64.99 | 81.15 | 76.25 | 96.50 |
Grass-pasture-mowed | 100 | 100 | 100 | 100 | 100 | 50.00 | 100 | 100 | 100 |
Hay-windrowed | 95.36 | 79.36 | 88.21 | 99.21 | 74.05 | 62.76 | 99.36 | 95.57 | 99.13 |
Oats | 100 | 88.23 | 100 | 100 | 100 | 73.68 | 100 | 100 | 100 |
Soybean-notill | 70.89 | 65.12 | 53.56 | 98.71 | 40.80 | 28.08 | 75.23 | 46.59 | 72.51 |
Soybean-mintill | 57.25 | 27.36 | 47.96 | 46.31 | 41.91 | 58.34 | 63.25 | 35.91 | 69.05 |
Soybean-clean | 56.61 | 38.13 | 20.11 | 56.21 | 25.97 | 11.48 | 68.64 | 75.59 | 63.03 |
Wheat | 100 | 74.25 | 76.73 | 99.62 | 82.58 | 36.66 | 100 | 92.43 | 99.47 |
Woods | 99.68 | 69.17 | 34.07 | 89.31 | 87.71 | 81.79 | 31.69 | 81.11 | 94.16 |
Buildings-Grass-Trees-Drives | 63.44 | 66.57 | 64.75 | 72.45 | 47.64 | 16.95 | 77.75 | 75.14 | 94.07 |
Stone-Steel-Towers | 99.67 | 97.77 | 95.55 | 98.89 | 98.87 | 70.73 | 100 | 100 | 100 |
DRIN | Sia-3DCNN | 3DCSN | S3Net | ALPN | FAAL | CFSL | Gia-CFSL | Proposed AL-MRIS | |
---|---|---|---|---|---|---|---|---|---|
OA (%) | 87.42 ± 5.07 | 85.62 ± 2.07 | 88.20 ± 1.97 | 88.84 ± 3.21 | 79.84 ± 0.61 | 62.57 ± 4.28 | 79.57 ± 2.45 | 87.44 ± 1.91 | 90.18 ± 1.79 |
AA (%) | 90.13 ± 2.49 | 88.55 ± 2.05 | 91.44 ± 1.48 | 92.39 ± 1.24 | 91.83 ± 0.39 | 62.47 ± 3.65 | 92.19 ± 2.18 | 91.13 ± 2.22 | 92.79 ± 2.25 |
Kappa × 100 | 86.08 ± 5.54 | 84.02 ± 2.27 | 86.90 ± 2.16 | 87.62 ± 3.53 | 77.83 ± 0.64 | 58.06 ± 4.89 | 77.63 ± 2.61 | 86.03 ± 2.13 | 89.05 ± 1.99 |
Brocoli_green_weeds_1 | 98.05 | 90.01 | 93.07 | 100 | 97.95 | 99.28 | 93.96 | 92.82 | 99.70 |
Brocoli_green_weeds_2 | 100 | 98.92 | 98.41 | 83.81 | 95.13 | 95.07 | 100 | 100 | 99.11 |
Fallow | 99.89 | 99.13 | 99.34 | 93.76 | 97.87 | 65.84 | 89.05 | 92.56 | 100 |
Fallow_rough_plow | 98.56 | 98.71 | 71.02 | 99.07 | 97.91 | 69.58 | 100 | 100 | 98.41 |
Fallow_smooth | 94.65 | 89.98 | 83.73 | 99.96 | 82.91 | 54.41 | 93.75 | 90.15 | 95.72 |
Stubble | 97.69 | 87.63 | 94.38 | 95.73 | 83.74 | 91.26 | 100 | 87.26 | 90.40 |
Celery | 98.82 | 92.95 | 98.99 | 100 | 88.17 | 98.65 | 100 | 48.16 | 99.32 |
Grapes_untrained | 18.19 | 88.55 | 85.51 | 61.43 | 54.81 | 85.83 | 7.81 | 87.84 | 91.49 |
Soil_vinyard_develop | 99.90 | 98.45 | 99.22 | 100 | 96.98 | 13.31 | 99.88 | 98.72 | 96.09 |
Corn_senesced_green_weeds | 89.19 | 32.51 | 90.04 | 94.05 | 57.25 | 81.58 | 97.92 | 94.16 | 95.56 |
Lettuce_romaine_4wk | 98.87 | 92.11 | 96.61 | 100 | 91.92 | 73.32 | 99.43 | 100 | 97.54 |
Lettuce_romaine_5wk | 96.04 | 89.71 | 92.09 | 94.29 | 95.47 | 55.21 | 99.74 | 89.48 | 94.41 |
Lettuce_romaine_6wk | 98.13 | 99.56 | 98.91 | 82.09 | 98.02 | 97.77 | 100 | 100 | 100 |
Lettuce_romaine_7wk | 98.21 | 98.21 | 92.41 | 98.03 | 95.12 | 39.96 | 99.71 | 97.78 | 97.35 |
Vinyard_untrained | 98.03 | 70.43 | 60.51 | 80.99 | 91.85 | 42.18 | 99.46 | 65.88 | 84.23 |
Vinyard_vertical_trellis | 96.51 | 78.54 | 82.15 | 98.45 | 84.58 | 13.44 | 100 | 90.28 | 99.67 |
Euclidean Distance | Manhattan Distance | Jensen–Shannon Distance | Cosine Distance | |
---|---|---|---|---|
OA (%) | 82.77 | 80.07 | 79.31 | 84.71 |
AA (%) | 79.96 | 75.29 | 76.18 | 82.27 |
Kappa × 100 | 77.32 | 74.01 | 72.34 | 79.81 |
No Siamese | No AL | No MIRN | Proposed AL-MRIS | |
---|---|---|---|---|
OA (%) | 66.72 | 74.51 | 64.42 | 84.71 |
AA (%) | 62.15 | 73.01 | 50.86 | 82.27 |
Kappa × 100 | 57.41 | 68.82 | 52.51 | 79.81 |
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Yang, J.; Qin, J.; Qian, J.; Li, A.; Wang, L. AL-MRIS: An Active Learning-Based Multipath Residual Involution Siamese Network for Few-Shot Hyperspectral Image Classification. Remote Sens. 2024, 16, 990. https://doi.org/10.3390/rs16060990
Yang J, Qin J, Qian J, Li A, Wang L. AL-MRIS: An Active Learning-Based Multipath Residual Involution Siamese Network for Few-Shot Hyperspectral Image Classification. Remote Sensing. 2024; 16(6):990. https://doi.org/10.3390/rs16060990
Chicago/Turabian StyleYang, Jinghui, Jia Qin, Jinxi Qian, Anqi Li, and Liguo Wang. 2024. "AL-MRIS: An Active Learning-Based Multipath Residual Involution Siamese Network for Few-Shot Hyperspectral Image Classification" Remote Sensing 16, no. 6: 990. https://doi.org/10.3390/rs16060990