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Unsupervised evaluation-based region merging for high resolution remote sensing image segmentation

机译:基于未经监督的基于评估的区域合并高分辨率遥感图像分割

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摘要

Image segmentation has a remarkable influence on the classification accuracy of object-based image analysis. Accordingly, how to raise the performance of remote sensing image segmentation is a key issue. However, this is challenging, primarily because it is difficult to avoid over-segmentation errors (OSE) and under-segmentation errors (USE). To solve this problem, this article presents a new segmentation technique by fusing a region merging method with an unsupervised segmentation evaluation technique called under- and over-segmentation aware (UOA), which is improved by using edge information. Edge information is also used to construct the merging criterion of the proposed approach. To validate the new segmentation scheme, five scenes of high resolution images acquired by Gaofen-2 and Ziyuan-3 multispectral sensors are chosen for the experiment. Quantitative evaluation metrics are employed in the experiment. Results indicate that the proposed algorithm obtains the lowest total error (TE) values for all test images (0.3791, 0.1434, 0.7601, 0.7569, 0.3169 for the first, second, third, fourth, fifth image, respectively; these values are averagely 0.1139 lower than the counterparts of the other methods), as compared to six state-of-the-art region merging-based segmentation approaches, including hybrid region merging, hierarchical segmentation, scale-variable region merging, size-constrained region merging with edge penalty, region merging guided by priority, and region merging combined with the original UOA. Moreover, the performance of the proposed method is better for artificial-object-dominant scenes than the ones mainly covering natural geo-objects.
机译:图像分割对基于对象的图像分析的分类精度具有显着影响。因此,如何提高遥感图像分割的性能是一个关键问题。然而,这是具有挑战性的,主要是因为难以避免过分分割错误(OSE)和欠分割错误(使用)。为了解决这个问题,本文通过融合具有所谓的未经监督的分割评估技术的区域合并方法来提出一种新的分割技术,该方法通过使用边缘信息来改进和过度分段感知(UOA)。边缘信息还用于构建所提出的方法的合并标准。为了验证新的分段方案,选择由高芬-2和Ziyuan-3多光谱传感器获取的高分辨率图像的五个场景,用于实验。实验中使用定量评估度量。结果表明,所提出的算法分别获得所有测试图像的最低总误差(TE)值(0.3791,0.1434,0.7601,0.750,0.7601,0.7569,0.3169,为第一,第二,第三,第四,第五图像;这些值平均为0.1139与其他方法的对应物相比,与六个最先进的基于区域合并的分割方法相比,包括混合区域合并,分层分割,尺度变量区域合并,用边缘惩罚合并的大小约束区域,由优先权指导的区域合并,区域与原始UOA合并。此外,所提出的方法的性能比主要覆盖自然地质对象的人工对象的场景更好。

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