Synthesis of multi-scale segmentation results based on land cover categories

Lina Yi, Zhaocong Wu, Guifeng Zhang, Yiming Zhang
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引用次数: 1

Abstract

In remote sensing imagery, ground objects belonging to the same land cover category always have similar optimal segmentation scales. The paper proposed a method using the land cover categories as a prior knowledge to guide the synthesis of multi-scale image segmentation results. This method took into account the variety of scale characteristics of different ground objects as well as the similarity of scale of objects belonging to the same land cover category. Firstly, the image was coarsely divided into multiple regions, and each of them belonged to a land cover category. Then for each category, we selected the optimal segmentation scale by the supervised accuracy assessment of segmentation results. Finally, the optimal scales of segmentation results were synthesized to get the final segmentation result. To validate this method, the Quickbird image was segmented and classified. Experimental results showed that this method could generate accurate segmentation results for the latter classification.
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基于土地覆盖分类的多尺度分割结果综合
在遥感影像中,属于同一土地覆盖类别的地物总是具有相似的最优分割尺度。提出了一种利用土地覆盖类别作为先验知识指导多尺度图像分割结果综合的方法。该方法既考虑了不同地物尺度特征的多样性,又考虑了同一土地覆盖类别地物尺度的相似性。首先,将图像粗略划分为多个区域,每个区域属于一个土地覆盖类别;然后对每一个分类,通过对分割结果的监督准确率评估,选择最优的分割尺度。最后,综合分割结果的最优尺度,得到最终的分割结果。为了验证该方法的有效性,对Quickbird图像进行了分割和分类。实验结果表明,该方法可以为后期分类生成准确的分割结果。
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