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    基于IForest和Sentinel-2的浒苔提取方法研究

    An IForest-RF method for extracting Ulva prolifera information from Sentinel-2 satellite imagery

    • 摘要: 针对浒苔遥感提取中固定阈值法精度低、普适性不足,以及监督分类方法(如支持向量机、随机森林(random forest,RF))需依赖大量标注样本等问题,文章提出了一种融合无监督孤立森林(isolation forest,IForest)异常检测与RF监督分类的自动化浒苔提取方法(IForest-RF)。该方法基于Sentinel-2 L2A卫星影像,在2024年6月26日黄海海域浒苔分布差异显著的2个区域对比了IForest-RF和5种其他方法(IForest结合大津法、IForest结合支持向量机法、传统大津法、支持向量机法和RF法)的浒苔提取精度,并进一步测试了该方法在大范围浒苔发生区域的识别效果。结果显示: IForest-RF法在2个测试区的总体精度均在90%以上,Kappa系数均大于95%,显著优于其他5种方法;大范围测试中总体精度为98%,Kappa系数为95%。总体来说,IForest-RF法兼具高精度、强适应性与自动化优势,可为浒苔灾害的实时监测与生态评估提供可靠技术支撑。

       

      Abstract: Current methods for extracting Ulva prolifera information based on remote sensing imagery face significant challenges, such as low accuracy and universality of fixed threshold methods, and the need for massive training samples in supervised classification methods (e.g., support vector machine (SVM) and random forest (RF)). To address these challenges, this study proposed an automatic IForest-RF method for extracting Ulva prolifera information, which combines the isolation forest (IForest) for unsupervised anomaly detection and the RF for supervised classification. The IForest-RF method was tested using the Sentinel-2 L2A satellite imagery of two regions with significantly different Ulva prolifera distributions in the Yellow Sea on June 26, 2024. Its extraction accuracy was compared with those of the other five methods: IForest combined with Otsu's method (IForest-OTSU), IForest combined with SVM (IForest-SVM), traditional Otsu's method, SVM, and RF. Furthermore, the effectiveness of the IForest-RF method in identifying large-scale Ulva prolifera areas was tested. The results demonstrate that the IForest-RF method achieved overall accuracies of above 90% and Kappa coefficients exceeding 95% in both test regions, significantly outperforming the other five methods. It yielded an overall accuracy of 98% and a Kappa coefficient of 95% in the large-scale test. Overall, the IForest-RF method exhibits high accuracy, excellent adaptability, and a high degree of automation, providing reliable technical support for real-time monitoring of Ulva prolifera disasters and ecological assessment.

       

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