Object Based Classification in Google Earth Engine Combining SNIC and Machine Learning Methods (Case Study: Lake Köyceğiz)

Pınar Karakuş
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Abstract

Köyceğiz Lake is one of our country’s most critical coastal barrier lakes, rich in sulfur, located at the western end of the Mediterranean Region. Köyceğiz Lake, connected to the Mediterranean via the Dalyan Strait, is one of the 7 lakes in the world with this feature. In this study, water change analysis of Köyceğiz Lake was carried out by integrating the Object-Based Image Classification method with CART (Classification and Regression Tree), RF (Random Forest), and SVM (Support Vector Machine) algorithms, which are machine learning algorithms. SNIC (Simple Non-iterative Clustering) segmentation method was used, which allows a detailed analysis at the object level by dividing the image into super pixels. Sentinel 2 Harmonized images of the study area were obtained from the Google Earth Engine (GEE) platform for 2019, 2020, 2021, and 2022,and all calculations were made in GEE. When the classification accuracies of four years were examined, it was seen that the classification accuracies(OA, UA, PA, and Kappa) of the lake water area were above 92%, F-score was above 0.98 for all methods using the object-based classification method obtained by the combination of the SNIC algorithm and CART, RF, and SVM machine learning algorithms. It has been determined that the SVM algorithm has higher evaluation metrics in determining the lake water area than the CART and RF methods.
结合 SNIC 和机器学习方法在谷歌地球引擎中进行基于对象的分类(案例研究:Köyceğiz 湖)
科伊采湖(Köyceğiz Lake)位于地中海地区西端,是我国最重要的沿海屏障湖泊之一,富含硫磺。科伊采湖通过达连海峡与地中海相连,是世界上 7 个具有这一特征的湖泊之一。在本研究中,通过将基于对象的图像分类方法与机器学习算法 CART(分类回归树)、RF(随机森林)和 SVM(支持向量机)算法相结合,对科伊采湖的水量变化进行了分析。使用 SNIC(简单非迭代聚类)分割方法,通过将图像分割成超级像素,可以在对象层面进行详细分析。从谷歌地球引擎(GEE)平台获取了研究区域 2019 年、2020 年、2021 年和 2022 年的哨兵 2 号协调图像,所有计算均在 GEE 中进行。在对四年的分类精度进行检验时发现,使用 SNIC 算法与 CART、RF 和 SVM 机器学习算法相结合得到的基于对象的分类方法,湖泊水域的分类精度(OA、UA、PA 和 Kappa)均在 92% 以上,F-score 均在 0.98 以上。结果表明,SVM 算法在确定湖泊水域面积方面的评价指标高于 CART 和 RF 方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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