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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >STUDY ON THE WATER BODY EXTRACTION USING GF-1 DATA BASED ON ADABOOST INTEGRATED LEARNING ALGORITHM
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STUDY ON THE WATER BODY EXTRACTION USING GF-1 DATA BASED ON ADABOOST INTEGRATED LEARNING ALGORITHM

机译:基于Adaboost综合学习算法的GF-1数据研究水体提取研究

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Surface water system is an important part of global ecosystem, and the changes in surface water may lead to disasters, such as drought, waterlog, and water-borne diseases. The rapid development of remote sensing technology has supplied better strategies for water bodies extraction and further monitoring. In this study, AdaBoost and Random Forest (RF), two typical algorithms in integrated learning, were applied to extract water bodies in Chaozhou area (mainly located in Guangzhou Province, China) based on GF-1 data, and the Decision Tree (DT) was used for comparative tests to comprehensively evaluate the performance of classification algorithms listed above for surface water body extraction. The results showed that: (1) Compared with visual interpretation, AdaBoost performed better than RF in the extraction of several typical water bodies, such as rivers, lakes and ponds Moreover, the water extraction results of the strong classifiers using AdaBoost or RF were better than the weak basic classifiers. (2) For the quantitative accuracy statistics, the overall accuracy (96.5%) and kappa coefficient (93%) using AdaBoost exceeded those using RF (5.3% and 10.6%), respectively. The classification time of AdaBoost increased by 403 seconds and 918 seconds relative to RF and DT methods. However, in terms of visual interpretation, quantitative statistical accuracy and classification time, AdaBoost algorithm was more suitable for the water body extraction. (3) For the sample proportion comparison experiment of AdaBoost, four sampling proportions (0.1%, 0.2%, 1% and 2%) were chosen and 0.1% sampling proportion reached the optimum classification accuracy (93.9%) and kappa coefficient (87.8%).
机译:地表水系统是全球生态系统的重要组成部分,地表水的变化可能导致灾害,如干旱,水利和水源性疾病。遥感技术的快速发展提供了更好的水体提取和进一步监测的策略。在本研究中,Adaboost和随机森林(RF),综合学习中的两个典型算法,应用于提取潮州地区的水体(主要位于中国,中国广州省),基于GF-1数据和决策树(DT用于比较试验以全面评价上面列出的地表水体提取的分类算法的性能。结果表明:(1)与视觉解释相比,Adaboost比RF在诸如河流,湖泊和池塘的提取中的RF更好地进行,使用Adaboost或RF的强大分类器的水提取结果更好比弱的基本分类器。 (2)对于定量精度统计,使用Adaboost的整体精度(96.5%)和κ系数(93%)分别超过使用RF(5.3%和10.6%)的达到的达峰。 Adaboost的分类时间相对于RF和DT方法增加了403秒和918秒。然而,就视觉解释而言,定量统计准确度和分类时间,Adaboost算法更适合于水体提取。 (3)对于Adaboost的样本比较实验,选择了四种取样比例(0.1%,0.2%,1%和2%),0.1%采样比例达到最佳分类精度(93.9%)和κ系数(87.8%) )。

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