研究目的
To improve the performance of land-cover change detection (LCCD) using bi-temporal very-high-resolution remote sensing images by proposing a novel multi-scale object histogram distance (MOHD) method.
研究成果
The proposed MOHD approach is feasible and effective for land-cover change detection, achieving competitive results with better balance in FA, MA, and TE compared to existing methods. It offers advantages in usability and parameter setting convenience, with potential for wide applications.
研究不足
The method requires multi-scale segmentation as a pre-step, which depends on practitioner experience for parameter determination. Future work should focus on automating parameter setting and testing on more datasets and feature spaces.
1:Experimental Design and Method Selection:
The study proposes the MOHD method, which involves multi-scale segmentation using the FNEA algorithm, histogram construction, bin-to-bin distance calculation, and Otsu thresholding for binary change detection.
2:Sample Selection and Data Sources:
Two datasets are used: Dataset A (aerial orthophoto images of a landslide event in Hong Kong, 1252x2199 pixels,
3:5 m/pixel resolution) and Dataset B (QuickBird satellite images of a land-use change event in Ji Nan City, 950x1250 pixels, 6 m/pixel resolution). List of Experimental Equipment and Materials:
Remote sensing images from Zeiss RMK TOP-1 aerial camera and QuickBird satellite; software eCognition
4:7 for segmentation. Experimental Procedures and Operational Workflow:
Extract multi-scale objects from post-event image using FNEA; overlay objects on bi-temporal images; construct histograms for each object; define arithmetic frequency-mean feature; calculate bin-to-bin distance for change magnitude; generate CMI; apply Otsu threshold to produce binary change detection map.
5:Data Analysis Methods:
Quantitative evaluation using false alarm rate (FA), missed alarm rate (MA), and total error (TE) metrics; comparison with LSELUC, PCA-Kmeans, and AMC-OBCD methods.
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