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A comparative study of the segmentation of weighted aggregation and multiresolution segmentation

机译:加权聚合分割与多分辨率分割的比较研究

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Multiresolution segmentation (MRS) algorithm has been widely used to handle very-high-resolution (VHR) remote sensing images in the past decades. Unfortunately, segmentation quality is limited by the dependency of parameter selection on users' experience and diverse images. Contrarily, the segmentation by weighted aggregation (SWA) can partly overcome the above limitations and produce an optimal segmentation for maximizing the homogeneity within segments and the heterogeneity across segments. However, SWA is solely tested and justified with digital photos in computer vision field instead of VHR images. This study aims at evaluating SWA performance on VHR imagery. First, multiscale spectral, shape, and texture features are defined to measure homogeneity of image objects for segmentation. Second, SWA is implemented to handle QuickBird, unmanned aerial vehicle (UAV), and GF-1 VHR images and further compared with MRS in eCognition software to demonstrate the applicability of SWA to diverse images in building, vegetation and water, forest stands, farmland, and mountain areas. Third, the results are fully evaluated with quantitative measurements on segmented objects and classification-based accuracy assessment on geographic information system vector data. The results indicate that SWA can produce higher quality segmentations, need fewer parameters and manual interventions, create fewer segmentation levels, incorporate more features, and obtain larger classification accuracy than MRS.
机译:在过去的几十年中,多分辨率分割(MRS)算法已被广泛用于处理超高分辨率(VHR)遥感图像。不幸的是,分割质量受到参数选择对用户体验和各种图像的依赖的限制。相反,加权聚集分割(SWA)可以部分克服上述限制,并产生最佳分割,以最大化段内的同质性和跨段的异质性。但是,仅在计算机视觉领域用数字照片(而不是VHR图像)对SWA进行了测试和证明。这项研究旨在评估SWA在VHR影像上的表现。首先,定义多尺度光谱,形状和纹理特征,以测量用于分割的图像对象的均匀性。其次,SWA用于处理QuickBird,无人机和GF-1 VHR图像,并在eCognition软件中与MRS进行了比较,以证明SWA在建筑物,植被和水,林分,农田中的各种图像的适用性和山区。第三,对结果进行全面评估,对分割的对象进行定量测量,并对地理信息系统矢量数据进行基于分类的准确性评估。结果表明,与MRS相比,SWA可以产生更高质量的细分,需要更少的参数和手动干预,创建更少的细分级别,合并更多功能并获得更大的分类准确性。

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