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Remote Sensing-Based Urban Green Space Detection Using Marine Predators Algorithm Optimized Machine Learning Approach

机译:基于遥感的城市绿地检测基于海洋捕食者算法优化机器学习方法

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摘要

Information regarding the current status of urban green space is crucial for urban land-use planning and management. This study proposes a remote sensing and data-driven solution for urban green space detection at regional scale via employment of state-of-the-art metaheuristic and machine learning approaches. Remotely sensed data obtained from Sentinel 2 satellite in the study area of Da Nang city (Vietnam) are used to construct and verify an intelligent model that hybridizes Marine Predators Algorithm (MPA) and support vector machines (SVM). SVM are employed to generalize a decision boundary that separates features characterizing statistical measurements of remote sensing data into two categories of "green space" and "nongreen space". The MPA metaheuristic is used to optimize the SVM training phase by identifying an appropriate set of the SVM's hyperparameters including the penalty coefficient and the kernel function parameter. Experimental results show that the proposed model which processes information provided by all of the Sentinel 2 satellite's spectral bands can deliver a better performance than those obtained from the model based on vegetation indices. With a good classification accuracy rate of roughly 93, an F1 score = 0.93, and an area under the receiver operating characteristic = 0.98, the newly developed model is a promising tool to assist local authority to obtain up-to-date information on urban green space and develop plans of sustainable urban land use.
机译:有关城市绿地现状的信息对于城市土地利用规划和管理至关重要。本研究通过采用最先进的元启发式和机器学习方法,提出了一种遥感和数据驱动的区域尺度城市绿地检测解决方案。利用越南岘港市研究区哨兵2号卫星获取的遥感数据,构建并验证了海洋捕食者算法(MPA)和支持向量机(SVM)的智能模型。支持向量机用于概括决策边界,将表征遥感数据统计测量的特征分为“绿色空间”和“非绿色空间”两类。MPA 元启发式用于通过识别一组适当的 SVM 超参数(包括惩罚系数和核函数参数)来优化 SVM 训练阶段。实验结果表明,所提模型处理了哨兵二号卫星所有光谱波段提供的信息,其性能优于基于植被指数的模型。新开发的模型具有约93%的良好分类准确率,F1得分= 0.93,受试者工作特征下的面积= 0.98,是帮助地方当局获取城市绿地最新信息并制定可持续城市土地利用计划的有前途的工具。

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