K均值聚类分割方法与生长区分割方法在红树林外部测量中的比较

Tyas Panorama Nan Cerah, Oky Dwi Nurhayati, R. Isnanto
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引用次数: 3

摘要

本研究旨在检验k-means聚类和区域生长分割方法,以识别和测量东南苏拉威西省的红树林面积。本研究区域的图像使用了陆地卫星8号卫星图像。红树林面积是通过计算被确定为面积密度为900平方米/像素的红树林的像素数量来进行的。在LAPAN计算相同面积的基础上,比较了两种分割方法计算面积的准确性。k-means聚类分割方法的整体准确率为59.26%,高于33.33%的区域增长准确率。使用Landsat 8卫星图像,可以使用k-means聚类和区域生长这两种图像分割方法来计算东南苏拉威西地区的红树林面积。
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Perbandingan Metode Segmentasi K-Means Clustering dan Segmentasi Region Growing untuk Pengukuran Luas Wilayah Hutan Mangrove
This study aims to examine the k-means clustering and region growing segmentation methods to identify and measure the area of mangrove forests in the Southeast Sulawesi province. The image of the area of this study used Landsat 8 satellite imagery. The area of mangrove forest was carried out by calculating the number of pixels identified as mangrove forests with an area density of 900 m2/pixel. The accuracy of the two segmentation methods in calculating the area was compared based on the same area calculated by LAPAN. The overall accuracy of k-means clustering segmentation method has better accuracy, which is 59.26%, than region growing with 33.33% of accuracy. Both image segmentation methods, k-means clustering and region growing, can be used to calculate the area of mangrove forests in the Southeast Sulawesi region using Landsat 8 satellite imagery.
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