研究目的
Extracting building footprint with high accuracy from high-resolution satellite data using optimized segmentation parameters to enable future work on distinguishing roof materials and evaluating optimization options at different scales.
研究成果
The proposed spatio-statistical optimization method effectively determines optimal segmentation parameters (scale, shape, compactness) for building footprint extraction, achieving high accuracy with an AUC of 0.804. The SSLB optimization option performs best, and the method is scalable to larger areas. Future work should include additional parameters and LiDAR data for enhanced classification.
研究不足
The method is tested only on building footprints and may not generalize to other land cover types. Misclassifications occur between buildings and roads due to spectral and spatial similarities. The study relies on specific satellite data and software, and does not incorporate height information from sources like LiDAR, which could improve accuracy.
1:Experimental Design and Method Selection:
The study uses a spatio-statistical optimization technique combining Taguchi method for experimental design and Plateau Objective Function (POF) for spatial optimization. The methodology involves designing orthogonal arrays, computing POF, analyzing SNR, and applying SVM classification.
2:Sample Selection and Data Sources:
WorldView 3 satellite data with 0.3 m spatial resolution is used, covering a 2.7 km2 area in Universiti Putra Malaysia campus. Ground samples include 260 image objects for training and testing.
3:3 m spatial resolution is used, covering a 7 km2 area in Universiti Putra Malaysia campus. Ground samples include 260 image objects for training and testing.
List of Experimental Equipment and Materials:
3. List of Experimental Equipment and Materials: eCognition software for segmentation, Minitab v.17 for statistical analysis, ENVI software for pre-processing, Garmin GPSmap 64s for ground verification, and AutoCAD 2018 for overlay analysis.
4:Experimental Procedures and Operational Workflow:
Steps include parameter selection, orthogonal array design, POF computation, SNR analysis, segmentation in eCognition, SVM classification, accuracy assessment using confusion matrix and ROC, and building extraction.
5:Data Analysis Methods:
Statistical analysis with Taguchi SNR, spatial metrics (AFI, US, OS, D, QR), ROC curve analysis, and geometric error assessment.
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