Remote sensed images segmentation through shape refinement

G. Gallo, Giorgio Grasso, Salvatore Nicotra, A. Pulvirenti
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引用次数: 3

Abstract

A novel approach to the automatic classification of remotely sensed images is proposed. This approach is based on a three-phase procedure: first pixels which belong to the areas of interest with large likelihood are selected as seeds; second the seeds are refined into connected shapes using two well-known image processing techniques; third the results of the shape refinement algorithms are merged together. The initial seed extraction is performed using a simple thresholding strategy applied to NDVI/sub 4-3/ index. Subsequently shape refinement through seeded region growing and watershed decomposition is applied; finally a merging procedure is applied to build likelihood maps. Experimental results are presented to analyze the correctness and robustness of the method in recognizing vegetation areas around Mount Etna.
基于形状细化的遥感图像分割
提出了一种新的遥感图像自动分类方法。该方法基于一个三个阶段的过程:首先,选择可能性较大的感兴趣区域的像素作为种子;其次,使用两种著名的图像处理技术将种子精炼成连接的形状;第三,对形状优化算法的结果进行合并。初始种子提取使用应用于NDVI/sub 4-3/ index的简单阈值策略进行。然后通过种子区生长和分水岭分解进行形状细化;最后,采用合并方法构建似然图。实验结果验证了该方法识别埃特纳火山周围植被区域的正确性和鲁棒性。
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