研究目的
To modify the accuracy of urban land cover classification through feature-level fusion of SAR image and all bands of Landsat 8 data.
研究成果
The feature-level fusion of Landsat 8 spectral features and SAR texture features improves the accuracy of urban land cover classification, especially in vegetation and road classes. Further modifications are needed for better segmentation capabilities and classification accuracy.
研究不足
The method still needs further modifications in the field of defining contextual information, utilizing digital elevation models as input data, and using artificial intelligence techniques for decreasing classification errors.
1:Experimental Design and Method Selection
An object-based image analysis strategy composed of image segmentation and knowledge-based classification of segmented regions.
2:Sample Selection and Data Sources
Landsat 8 and SAR data over an urban area in Barcelona, Spain.
3:List of Experimental Equipment and Materials
Landsat 8 data, SAR data (Terra SAR-X Strip map with HH polarization channel), eCognition software.
4:Experimental Procedures and Operational Workflow
Multi-resolution segmentation applied individually on SAR and Landsat 8 images, followed by feature measurement and knowledge-based classification.
5:Data Analysis Methods
Quantitative evaluation based on the number of correctly detected pixels, wrongly detected pixels, and not correctly recognized pixels.
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