Automatic Building Detection from High-Resolution Remote Sensing Images Based on Joint Optimization and Decision Fusion of Morphological Attribute Profiles
Abstract
:1. Introduction
2. Related Work
2.1. Building Detection from Remote Sensing Images
2.1.1. Deep Learning Methods
2.1.2. Non-Deep Learning Methods
2.2. MAP Theory and Constitution of Attribute Set
3. Method
3.1. Data Pre-Processing
3.1.1. Image Segmentation by WJSEG
3.1.2. Non-Building Pre-Screening
3.2. ACGA-DAPs Extraction Based on Multi-Attribute Joint Optimization
3.2.1. Candidate Object Set of DAPs
3.2.2. ACGA-DAPs
3.3. Construct an Unsupervised Decision Fusion Framework
3.3.1. Identification Framework Based on D–S Theory
3.3.2. Calculation of SSBI
3.3.3. BPAF and Discrimination Rules
4. Experiments and Evaluation
4.1. Dataset and Experimental Strategy
4.1.1. Dataset Description
4.1.2. Experimental Set-Up
4.2. Experimental Results and Accuracy Evaluation
4.2.1. General Results and Analysis
4.2.2. Visual Comparison of Representative Patches
5. Discussion
6. Conclusion and Future Lines of Research
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Attribute | Initial Parameter Set of Dataset 1 | Number |
---|---|---|
Area | (500,1050,1600,2700,3250,3800,4900,5450,7100,7650,8200,9850,12050,14800,15900,17000,19200,21400,21950,23050,23600,26350,27450) | 23 |
Diagonal | (10,13.6,17.2,19,24.4,26.2,21.6,38.8,40.6,44.6,47.8,56.8,58.6,62.2,64,65.8,69.4,71.2,78.4,91,92.8,94.6,98.2) | 23 |
Standard deviation | (11.2,13.6,14.8,17.2,240.8,25.6,26.8,29.2,32.8,34,44.8,54.4,56.8,58,60.4,62.8,64,65.2,67.6) | 19 |
NMI | (0.206,0.242,0.248,0.254,0.29,0.296,0.314,0.326,0.332,0.338,0.344,0.374,0.392,0.398,0.41,0.422,0.446,0.458,0.47,0.476) | 20 |
Attribute | Initial Parameter Set of Dataset 2 | Number |
---|---|---|
Area | (500,2150,3800,4900,5450,7650,8200,9850,12050,14800,17000,17550, 22500,23050,23600,24700,27450) | 17 |
Diagonal | (13.6,15.4,17.2,19,22.6,24.4,28,29.8,31.6,35.2,37,38.8,49.6,51.4,56.8,60.4,62.6,74.8,80.2,82,85.6,96.4) | 22 |
Standard deviation | (10,13.6,14.8,16,26.8,29.2,32.8,34,36.4,40,43.6,47.2,49.6,52,56.8,60.4,67,6) | 17 |
NMI | (0.2,0.206,0.254,0.26,0.272,0.284,0.29,0.296,0.30,0.356,0.362,0.392,0.404,0.41,0.422,0.44,0.47) | 20 |
Attribute | Initial Parameter Set of Dataset 3 | Number |
---|---|---|
Area | (2150,2700,4350,4900,6550,7100,7650,8750,9850,11500,12050,12600,14250,15350,16450,17000,17550,21400,23050,24700,25250) | 21 |
Diagonal | (15.4,19,22.6,24.4,28,29.8,31.6,35.2,38.8,44.2,46,47.8,51.4,56.8,62.2,64,69.4,76.6,80.2,82,83.8,89.2,94.6,96.4) | 24 |
Standard deviation | (2.4,13.6,16,18.4,19.6,22,24.4,26.8,29.2,32.8,34,35.2,37.6,41.2,44.8,46,49.6,54.4,56.8,58,59.2,62.8) | 22 |
NMI | (0.224,0.236,0.254,0.26,0.272,0.29,0.296,0.302,0.344,0.35,0.362,0.41,0.43,0.452,0.458,0.476,0.488) | 17 |
Method/Indicator | OA (%) | FP (%) | FN (%) | Kappa |
---|---|---|---|---|
Evaluation Criteria | The Higher the Better | The Lower the Better | The Lower the Better | The Higher the Better |
Proposed method | 93.2 | 3.71 | 2.99 | 0.809 |
Adaptive MAPS | 92.1 | 4.71 | 3.12 | 0.782 |
GLCM-SVM | 83.8 | 10.7 | 5.99 | 0.663 |
Top-hat | 83.1 | 6.83 | 9.82 | 0.644 |
DeepLab-Otsu | 66.6 | 27.3 | 6.11 | 0.282 |
DeepLab-fusion | 69.8 | 20.9 | 9.22 | 0.270 |
DAPs-fusion | 85.8 | 10.16 | 4.07 | 0.687 |
Method/Indicator | OA (%) | FP (%) | FN (%) | Kappa |
---|---|---|---|---|
Evaluation Criteria | The Higher the Better | The Lower the Better | The Lower the Better | The Higher the Better |
Proposed method | 92.2 | 4.76 | 3.03 | 0.841 |
Adaptive MAPS | 90.2 | 6.95 | 3.25 | 0.780 |
GLCM-SVM | 80.1 | 5.64 | 14.3 | 0.594 |
Top-hat | 78.7 | 8.89 | 12.6 | 0.568 |
DeepLab-Otsu | 82.0 | 3.90 | 14.7 | 0.622 |
DeepLab-fusion | 83.1 | 5.41 | 11.4 | 0.649 |
DAPs-fusion | 83.7 | 9.81 | 5.38 | 0.674 |
Method/Indicator | OA (%) | FP (%) | FN (%) | Kappa |
---|---|---|---|---|
Evaluation Criteria | The Higher the Better | The Lower the Better | The Lower the Better | The Higher the Better |
Proposed method | 91.9 | 6.13 | 1.89 | 0.811 |
Adaptive MAPS | 90.5 | 4.65 | 5.12 | 0.766 |
GLCM-SVM | 80.9 | 9.30 | 9.77 | 0.563 |
Top-hat | 72.6 | 12.6 | 14.9 | 0.456 |
DeepLab-Otsu | 81.1 | 2.36 | 16.5 | 0.614 |
DeepLab-fusion | 83.5 | 3.77 | 12.74 | 0.649 |
DAPs-fusion | 84.9 | 10.92 | 4.25 | 0.624 |
Dataset 1 | Dataset 2 | Dataset 3 | |
---|---|---|---|
0.93 | 0.87 | 0.91 | |
0.18 | 0.16 | 0.21 |
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Wang, C.; Zhang, Y.; Chen, X.; Jiang, H.; Mukherjee, M.; Wang, S. Automatic Building Detection from High-Resolution Remote Sensing Images Based on Joint Optimization and Decision Fusion of Morphological Attribute Profiles. Remote Sens. 2021, 13, 357. https://doi.org/10.3390/rs13030357
Wang C, Zhang Y, Chen X, Jiang H, Mukherjee M, Wang S. Automatic Building Detection from High-Resolution Remote Sensing Images Based on Joint Optimization and Decision Fusion of Morphological Attribute Profiles. Remote Sensing. 2021; 13(3):357. https://doi.org/10.3390/rs13030357
Chicago/Turabian StyleWang, Chao, Yan Zhang, Xiaohui Chen, Hao Jiang, Mithun Mukherjee, and Shuai Wang. 2021. "Automatic Building Detection from High-Resolution Remote Sensing Images Based on Joint Optimization and Decision Fusion of Morphological Attribute Profiles" Remote Sensing 13, no. 3: 357. https://doi.org/10.3390/rs13030357
APA StyleWang, C., Zhang, Y., Chen, X., Jiang, H., Mukherjee, M., & Wang, S. (2021). Automatic Building Detection from High-Resolution Remote Sensing Images Based on Joint Optimization and Decision Fusion of Morphological Attribute Profiles. Remote Sensing, 13(3), 357. https://doi.org/10.3390/rs13030357