Journal of Xidian University ›› 2023, Vol. 50 ›› Issue (3): 151-170.doi: 10.19665/j.issn1001-2400.2023.03.015
• Information and Communications Engineering & Electronic Science and Technology • Previous Articles Next Articles
XIE Wen1(),HUA Wenqiang1(),JIAO Licheng2(),WANG Ruonan1()
Received:
2022-05-27
Online:
2023-06-20
Published:
2023-10-13
CLC Number:
XIE Wen,HUA Wenqiang,JIAO Licheng,WANG Ruonan. Review on polarimetric SAR terrain classification methods using deep learning[J].Journal of Xidian University, 2023, 50(3): 151-170.
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种类 | 方法 | |||||
---|---|---|---|---|---|---|
Wishart | SVM | DBN[ | WRBM[ | WBRBM[ | GRBM[ | |
Stem beans | 93.36 | 84.06 | 76.76 | 94.78 | 96.60 | 95.65 |
Rapeseed | 61.41 | 62.56 | 51.89 | 80.42 | 86.71 | 83.26 |
Bare soil | 87.14 | 92.86 | 94.95 | 93.64 | 96.99 | 97.96 |
Potatoes | 77.66 | 82.53 | 87.61 | 98.11 | 88.88 | 92.69 |
Beet | 83.70 | 93.95 | 87.54 | 96.30 | 95.81 | 97.45 |
Wheat 2 | 73.61 | 71.67 | 81.03 | 94.66 | 88.17 | 82.19 |
Peas | 86.52 | 91.38 | 91.44 | 92.07 | 96.80 | 95.97 |
Wheat 3 | 90.77 | 95.67 | 97.66 | 97.82 | 93.77 | 98.02 |
Lucerne | 94.61 | 79.21 | 95.70 | 92.45 | 96.11 | 96.91 |
Barley | 96.95 | 95.31 | 59.28 | 98.88 | 98.06 | 91.80 |
Wheat | 95.17 | 90.23 | 94.34 | 93.86 | 92.32 | 98.14 |
Grasses | 62.58 | 72.95 | 10.03 | 81.52 | 90.93 | 67.64 |
Forest | 93.80 | 90.57 | 92.52 | 95.34 | 91.41 | 95.64 |
Water | 40.33 | 90.99 | 68.95 | 99.74 | 99.60 | 89.59 |
Building | 87.35 | 1.63 | 23.95 | 82.45 | 85.26 | 77.69 |
OA | 81.66 | 79.70 | 74.24 | 92.80 | 93.08 | 90.71 |
Kappa | 0.800 7 | 0.778 6 | 0.719 1 | 0.921 5 | 0.924 9 | 0.898 7 |
"
种类 | 方法 | ||||||||
---|---|---|---|---|---|---|---|---|---|
DBN[ | WRBM[ | SAE[ | SAE- BWMRF[ | SSAE- SL[ | WAE[ | CV-WSAE[ | CAE[ | MAE[ | |
Stem beans | 79.05 | 95.17 | 84.22 | 98.91 | 98.80 | 92.42 | 78.89 | 78.98 | 95.91 |
Rapeseed | 39.33 | 64.31 | 74.19 | 66.49 | 87.82 | 78.80 | 72.90 | 83.32 | 84.11 |
Bare soil | 0.00 | 39.95 | 93.78 | 99.88 | 97.73 | 96.06 | 76.70 | 79.24 | 92.62 |
Potatoes | 93.74 | 87.00 | 81.55 | 97.33 | 93.74 | 93.70 | 96.30 | 98.48 | 89.64 |
Beet | 93.25 | 89.33 | 88.96 | 98.79 | 96.52 | 89.06 | 94.37 | 96.72 | 95.77 |
Wheat 2 | 89.52 | 62.63 | 64.88 | 93.51 | 87.21 | 90.62 | 87.60 | 85.93 | 81.02 |
Peas | 93.77 | 93.33 | 92.85 | 97.91 | 95.72 | 78.20 | 41.94 | 49.22 | 96.42 |
Wheat 3 | 97.70 | 95.45 | 94.32 | 94.15 | 96.70 | 85.69 | 79.52 | 85.02 | 95.06 |
Lucerne | 80.60 | 93.84 | 94.72 | 96.88 | 96.91 | 93.52 | 92.13 | 93.83 | 95.34 |
Barley | 75.98 | 93.51 | 94.38 | 88.86 | 94.79 | 93.04 | 97.11 | 97.76 | 95.98 |
Wheat | 92.01 | 90.18 | 85.14 | 92.08 | 93.55 | 91.23 | 94.76 | 96.12 | 91.57 |
Grasses | 42.66 | 56.55 | 77.20 | 80.94 | 93.36 | 92.39 | 96.60 | 98.64 | 86.41 |
Forest | 94.08 | 89.52 | 93.57 | 90.49 | 93.95 | 93.48 | 87.56 | 88.49 | 91.13 |
Water | 91.77 | 83.64 | 99.30 | 35.70 | 99.61 | 86.89 | 90.37 | 92.20 | 98.02 |
Building | 0.00 | 8.57 | 37.69 | 81.77 | 87.48 | 85.39 | 59.74 | 72.99 | 84.09 |
OA | 70.86 | 76.19 | 83.78 | 87.58 | 94.26 | 89.97 | 83.10 | 86.46 | 92.01 |
Kappa | 0.681 7 | 0.740 4 | 0.823 1 | 0.865 1 | 0.937 8 | 0.885 7 | 0.818 2 | 0.854 0 | 0.912 7 |
"
种类 | 方法 | |||||||||
---|---|---|---|---|---|---|---|---|---|---|
DBN[ | SAE[ | CNN[ | 3D- CNN[ | FCN- SPUO[ | MI-SSL[ | KGraph- CNN[ | CNNSP[ | CV-3D- CNN[ | PCN[ | |
Stem beans | 79.05 | 84.22 | 83.81 | 97.52 | 99.98 | 99.95 | 99.07 | 98.58 | 98.63 | 92.11 |
Rapeseed | 39.33 | 74.19 | 67.52 | 90.03 | 98.87 | 99.64 | 99.15 | 94.44 | 97.48 | 95.76 |
Bare soil | 0.00 | 93.78 | 60.72 | 97.67 | 99.91 | 99.43 | 100.00 | 99.67 | 92.74 | 98.71 |
Potatoes | 93.74 | 81.55 | 90.75 | 90.78 | 99.44 | 99.97 | 99.63 | 99.73 | 93.60 | 96.49 |
Beet | 93.25 | 88.96 | 95.25 | 91.47 | 98.93 | 99.95 | 99.76 | 97.11 | 95.21 | 91.07 |
Wheat 2 | 89.52 | 64.88 | 86.34 | 86.08 | 98.07 | 99.75 | 85.86 | 99.32 | 95.73 | 96.27 |
Peas | 93.77 | 92.85 | 98.46 | 96.45 | 99.03 | 99.86 | 99.96 | 99.55 | 87.65 | 97.52 |
Wheat 3 | 97.70 | 94.32 | 97.01 | 97.46 | 99.78 | 99.95 | 99.01 | 98.21 | 99.44 | 96.87 |
Lucerne | 80.60 | 94.72 | 80.54 | 95.31 | 97.45 | 99.98 | 98.10 | 92.33 | 84.81 | 96.13 |
Barley | 75.98 | 94.38 | 85.62 | 97.46 | 99.17 | 99.60 | 98.08 | 97.29 | 84.14 | 92.23 |
Wheat | 92.01 | 85.14 | 91.36 | 92.92 | 99.56 | 99.82 | 99.71 | 96.87 | 98.79 | 96.62 |
Grasses | 42.66 | 77.20 | 64.86 | 91.54 | 99.68 | 99.51 | 92.50 | 93.41 | 72.39 | 96.32 |
Forest | 94.08 | 93.57 | 87.49 | 96.03 | 99.89 | 99.98 | 98.81 | 99.19 | 99.85 | 99.05 |
Water | 91.77 | 99.30 | 91.82 | 93.66 | 99.50 | 100.00 | 98.69 | 99.07 | 99.95 | 98.06 |
Building | 0.00 | 37.69 | 85.44 | 73.61 | 90.51 | 96.95 | 76.84 | 95.78 | 96.22 | 81.26 |
OA | 70.86 | 83.78 | 84.47 | 92.53 | 99.24 | 99.84 | 96.34 | 97.37 | 93.42 | 96.36 |
Kappa | 0.681 7 | 0.823 1 | 0.830 7 | 0.918 6 | 0.991 8 | 0.995 9 | 0.960 2 | 0.971 4 | 0.928 5 | 0.960 4 |
"
极化SAR图像分类方法 | 代表性算法 | 优点 | 不足 |
---|---|---|---|
基于DBN的极化SAR 图像分类方法 | WRBM[ WBRBM[ | 图像细节信息清晰,边缘保持得好;既包含了信念网络的优点,也保留了极化SAR的数据特性 | 没有考虑图像的空间信息;斑点噪声较明显;增加了网络的复杂度,训练时间成本增加 |
基于SAE的极化SAR 图像分类方法 | SSAE-SL[ SAE-BWMRF[ | 考虑极化SAR图像像素之间的空间信息 | 没有考虑极化SAR数据的统计分布信息和物理散射机制 |
WAE[ MAE[ | 图像细节信息清晰,边缘保持得好;既继承自编码网络的优点,也保留了极化SAR的数据特性 | 没有考虑图像的空间信息;斑点噪声较明显;增加了网络的复杂度,训练时间成本增加 | |
基于CNN的极化SAR 图像分类方法 | 3D-CNN[ CV-CNN[ CV-3D-CNN[ | 图像区域一致性好;考虑了空间信息、特征之间的关系以及极化SAR数据的复数特性 | 图像细节信息不清晰;增加了网络的复杂度,训练时间成本增加 |
CV-FCN[ PCLNet[ KGraph-CNN[ CNNSP[ | 图像区域一致性好;解决小样本问题 | 图像细节信息不清晰;增加了网络的复杂度,训练时间成本增加 |
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