研究机器学习如何在中等分辨率卫星图像中绘制红树林地图

Agus Ambarwari, Emir Mauludi Husni
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引用次数: 0

摘要

潮间带红树林是生产力极高的生态系统,具有多种社会经济优势。保护和适当利用这些生态系统至关重要。然而,由于红树林分布广泛且难以到达,保护和恢复红树林面临着挑战。利用遥感技术和不同的图像分类方法已显示出精确绘制和监测红树林的前景。本研究回顾了机器学习方法在绘制和监测红树林方面的应用,特别是使用中等分辨率多光谱卫星图像的情况。文献研究是通过系统搜索和分析 2018 年至 2023 年发表在 Scopus 索引期刊上的文章进行的。主要目的是揭示利用中等分辨率图像绘制红树林地图的方法,确定机器学习算法的进展,并帮助研究人员了解该领域的最新情况。研究结果表明,可以采用各种机器学习算法来绘制红树林地图。利用机器学习绘制红树林地图通常包括输入多光谱图像、图像预处理、图像分类和评估准确性等阶段。在这些技术中,就遥感数据而言,基于树的集合方法(如随机森林)优于单一分类器。未来研究的潜在问题和新出现的问题包括自动生成特定土地覆被分类的训练数据集,开发将分类模型转移到不同研究区域的方法,以及利用基于云的技术处理遥感数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Studying How Machine Learning Maps Mangroves in Moderate-Resolution Satellite Images
Intertidal mangrove forests are ecosystems that are extremely productive offering diverse socio-economic advantages. Preserving and appropriately using these ecosystems is crucial. However, safeguarding and restoring mangroves present challenges due to their extensive and hard-to-reach areas. Leveraging remote sensing technology and diverse image classification methods has shown promise in accurately mapping and monitoring mangroves. This study reviews the use of machine learning methods in mapping and monitoring mangroves, particularly using moderate-resolution multispectral satellite images. The literature study was conducted by systematically searching and analyzing articles published in Scopus-indexed journals from 2018 and 2023. The primary goals are to uncover methodologies for mapping mangroves with moderate-resolution imagery, identify advancements in machine learning algorithms, and assist researchers in staying updated in this field. The findings reveal that various machine-learning algorithms can be employed to map mangroves. Mangrove mapping with machine learning typically involves stages such as inputting multispectral images, image preprocessing, image classification, and assessing accuracy. Among the techniques, in the case of remote sensing data, ensemble tree-based approaches such as random forest outperform single classifiers. Potential and emerging issues for future research encompass automating the generation of training datasets for specific land cover classification, developing methods to transfer the classification model to different study areas, and making use of cloud-based technologies for processing remote sensing data.
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