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Multiscale Optimized Segmentation of Urban Green Cover in High Resolution Remote Sensing Image

机译:高分辨率优化的高分辨率遥感图像中的城市绿色封面分割

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摘要

The urban green cover in high-spatial resolution (HR) remote sensing images have obvious multiscale characteristics, it is thus not possible to properly segment all features using a single segmentation scale because over-segmentation or under-segmentation often occurs. In this study, an unsupervised cross-scale optimization method specifically for urban green cover segmentation is proposed. A global optimal segmentation is first selected from multiscale segmentation results by using an optimization indicator. The regions in the global optimal segmentation are then isolated into under- and fine-segmentation parts. The under-segmentation regions are further locally refined by using the same indicator as that in global optimization. Finally, the fine-segmentation part and the refined under-segmentation part are combined to obtain the final cross-scale optimized result. The green cover objects can be segmented at their specific optimal segmentation scales in the optimized segmentation result to reduce both under- and over-segmentation errors. Experimental results on two test HR datasets verify the effectiveness of the proposed method.
机译:在高空间分辨率(HR)遥感图像中的城市绿色封面具有明显的多尺度特性,因此不可能使用单个分段刻度划分所有功能,因为经常发生过分分割或欠分割。在这项研究中,提出了专门用于城市绿色覆盖分割的无监督的跨比优化方法。首先使用优化指示器从多尺度分段结果中选择全局最佳分割。然后将全局最佳分割中的区域分离为细分和细分分割部分。通过使用与全局优化中的指标相同的指标进一步局部改进了下分割区域。最后,结合细分部分和精细的下分割部分以获得最终的横梁优化结果。在优化的分段结果中可以在其特定的最佳分割尺度上分段为绿覆盖物,以减少底层和过分分割错误。两个测试HR数据集的实验结果验证了该方法的有效性。

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