基于机器学习的非均质水动力和形态动力结构海岸带水体分割

İrem Gümüşçü, Furkan Altas, Beril Türkekul, Hasan Alper Kaya, F. Erdem, Tolga Bakirman, B. Bayram
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引用次数: 0

摘要

就其社会经济和自然价值而言,沿海地区是世界上最重要的部分。对海岸带进行准确测量和监测是海岸带管理的重要课题。与地面研究相比,丰富了机器学习算法(如随机森林(RF)和支持向量机(SVM))的遥感应用在成本、时间和研究区域规模方面具有显著优势。在本研究范围内,利用SVM和RF算法对土耳其5个具有不同形态和水动力特性的沿海地区的Sentinel-2图像进行陆地和水体分类。比较了Sentinel-2图像不同波段组合下SVM和RF分类的水体分割结果。根据各区域的地理条件,对影响精度分析结果的原因进行了分析。实验结果表明,所采用的机器学习方法对涉及近红外波段的组合在所有研究区域都提供了满意的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Water-body Segmentation in Heterogeneous Hydrodynamic and Morphodynamic Structured Coastal Areas by Machine Learning
Coastal areas constitute the most important part of the world when considered in terms of their socio-economic and natural values. Measuring and monitoring the coastal areas accurately is an important issue for coastal management. Compared to ground-based studies, remote sensing applications enriched with machine learning algorithms such as Random Forest (RF) and Support Vector Machine (SVM) provide significant benefits in terms of cost, time, and size of the study area. Within the scope of this study, Sentinel-2 images for five coastal areas located in Turkey with different morphological and hydrodynamic properties were classified as land and water-bodies using SVM and RF algorithms. Water-body segmentation results of the SVM and RF classification for the different band combinations of Sentinel-2 images have been compared. The reasons affecting the results of the accuracy analysis were examined in accordance with the geography of each area. Experimental results show that the utilized machine learning methods provide satisfactory results for combinations involving the NIR band in all study areas.
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