基于多分类算法的高分辨率卫星图像浅水生境制图评估

Q3 Social Sciences
M. R. Nandika, A. Ulfa, A. Ibrahim, A. Purwanto
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引用次数: 1

摘要

遥感技术在识别海底覆盖物的分布方面是可靠的,但在检索浅水栖息地的数据收集方面仍然存在挑战,而不是陆地上的其他物体。基于遥感技术的分类算法已被开发用于绘制海底栖息地地图,如最大似然、最小距离和支持向量机。这项研究的重点是检查这三种分类算法,以检索雅加达帕里岛海底栖息地的信息,使用视觉解释数据进行分类,并使用数据场测量进行准确性测试。这项研究使用了五类底栖生物,即沙子、沙子海草、碎石、海草和珊瑚。结果表明,本研究中提出的方法提供了一个总体良好的海洋栖息地分类,准确率为63.89–81.95%。支持向量机算法的准确率最高,约为81.95%。在非常高的空间分辨率下,支持向量机法被认为能够识别、监测,以及对海底生境物体进行快速评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing the Shallow Water Habitat Mapping Extracted from High-Resolution Satellite Image with Multi Classification Algorithms
Remote sensing technology is reliable in identifying the distribution of seabed cover yet there are still challenges in retrieving the data collection of shallow water habitats than with other objects on land. Classification algorithms based on remote sensing technology have been developed for application to map benthic habitats, such as Maximum Likelihood, Minimum Distance, and Support Vector Machine. This study focuses on examining those three classification algorithms to retrieve information on the benthic habitat in Pari Island, Jakarta using visual interpretation data for classification, and data field measurements for accuracy testing. This study used five classes of benthic objects, namely sand, sand-seagrass, rubble, seagrass, and coral. The results show how the proposed approach in this study provides an overall good classification of marine habitat with an accuracy produced 63.89–81.95%. The Support Vector Machine algorithm produced the highest accuracy rate of about 81.95%. The Support Vector Machine algorithm at a very high spatial resolution is considered to be capable of identifying, monitoring, and performing the rapid assessment of benthic habitat objects.
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来源期刊
Geomatics and Environmental Engineering
Geomatics and Environmental Engineering Earth and Planetary Sciences-Computers in Earth Sciences
CiteScore
2.30
自引率
0.00%
发文量
27
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