Multiple Classifiers Based Semi-Supervised Polarimetric SAR Image Classification Method
Abstract
:1. Introduction
2. Related Works
2.1. PolSAR Data
2.2. Traditional Classifiers
2.2.1. Wishart Classification
2.2.2. Support Vector Machine Classification
2.2.3. Deep Learning Method for PolSAR
3. The Proposed Approach
3.1. The Deep Learning Method
3.2. Configuration of the Proposed Method
3.3. Preprocessing of PolSAR Data for CV-CNN
4. Experimental Section
4.1. Experiments with the Flevoland Dataset
4.2. Experiments with the Oberpfaffenhofen Dataset
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Data Set | Platform | Polarization | Spatial Resolution | Band | Number of Looks | Size |
---|---|---|---|---|---|---|
Flevoland | AIRSAR | Quad-polarization | 10 m × 10 m | L | 4 | 1024 × 750 |
Oberpfaffenhofen | ESAR | Quad-polarization | 3 m × 3 m | L | 1 | 1300 × 1200 |
Class | Number of Samples | Wishart | SVM | CV-CNN | Strong Dataset | Number of Samples in Strong Dataset | Proposed Method |
---|---|---|---|---|---|---|---|
Stem beans | 41 | 99.87 | 97.28 | 81.91 | 99.98 | 10,934 | 97.72 |
Peas | 61 | 89.31 | 83.23 | 97.07 | 99.22 | 12,288 | 97.93 |
Forest | 45 | 89.94 | 86.17 | 91.96 | 99.01 | 20,614 | 96.83 |
Lucerne | 38 | 97.70 | 94.54 | 90.72 | 99.98 | 15,469 | 96.82 |
Wheat | 48 | 92.84 | 81.81 | 94.95 | 99.89 | 18,442 | 96.63 |
Beet | 32 | 95.35 | 97.19 | 84.53 | 99.66 | 62,295 | 95.64 |
Potatoes | 17 | 83.27 | 53.57 | 58.14 | 85.24 | 25,780 | 80.93 |
Grass | 25 | 86.12 | 80.32 | 78.99 | 94.10 | 27,155 | 84.59 |
Rapeseed | 33 | 65.82 | 50.39 | 49.24 | 78.45 | 12,927 | 84.41 |
Barley | 17 | 78.73 | 88.90 | 89.99 | 99.84 | 19,934 | 91.29 |
Wheat 2 | 47 | 67.02 | 76.97 | 84.72 | 92.42 | 8520 | 82.64 |
Wheat 3 | 57 | 93.39 | 92.63 | 91.52 | 99.66 | 24,822 | 97.41 |
Water | 48 | 90.78 | 88.95 | 87.12 | 99.58 | 19,653 | 96.19 |
OA | -- | 87.04 | 80.78 | 81.77 | 97.34 | -- | 90.75 |
Kappa | -- | 85.96 | 79.18 | 80.25 | 97.11 | -- | 89.96 |
Class | Wishart | SVM | CV-CNN | Strong Dataset | Proposed Method |
---|---|---|---|---|---|
Built-up area | 43.66 | 46.24 | 36.86 | 61.28 | 55.46 |
Wood land | 90.05 | 81.29 | 77.39 | 93.19 | 78.67 |
Open areas | 85.16 | 89.28 | 98.06 | 99.89 | 96.29 |
OA | 75.70 | 77.01 | 78.89 | 87.47 | 82.76 |
Kappa | 61.48 | 62.46 | 63.41 | 75.21 | 71.47 |
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Zhu, L.; Ma, X.; Wu, P.; Xu, J. Multiple Classifiers Based Semi-Supervised Polarimetric SAR Image Classification Method. Sensors 2021, 21, 3006. https://doi.org/10.3390/s21093006
Zhu L, Ma X, Wu P, Xu J. Multiple Classifiers Based Semi-Supervised Polarimetric SAR Image Classification Method. Sensors. 2021; 21(9):3006. https://doi.org/10.3390/s21093006
Chicago/Turabian StyleZhu, Lekun, Xiaoshuang Ma, Penghai Wu, and Jiangong Xu. 2021. "Multiple Classifiers Based Semi-Supervised Polarimetric SAR Image Classification Method" Sensors 21, no. 9: 3006. https://doi.org/10.3390/s21093006
APA StyleZhu, L., Ma, X., Wu, P., & Xu, J. (2021). Multiple Classifiers Based Semi-Supervised Polarimetric SAR Image Classification Method. Sensors, 21(9), 3006. https://doi.org/10.3390/s21093006