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Optimization of urban land cover classification using an improved Elephant Herding Optimization algorithm and random forest classifier

机译:利用改进的大象优化优化算法和随机林分类优化城市土地覆盖分类

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摘要

This paper aims to provide a novel approach for improving urban land cover classification accuracy, which combines the Elephant Herding Optimization (EHO) algorithm as a meta-heuristic optimization method with the Random Forest (RF) classifier. The proposed approach involves both classifier hyperparameter tuning and feature selection for a data set of a selected urban area. The EHO and the RF algorithms were both utilized in a hybrid system (EHO-RF) to find an optimal classification model with a tuned set of hyperparameters and features (predictor variables). EHO-RF model tuning was followed by backward feature elimination using RF, which further reduced data dimensionality. This work also combines two well-known optimization and feature selection algorithms to enhance accuracy assessment of the proposed approach. Grid search optimization was combined with Variable Selection Using Random Forests (VSURF) algorithm to build an optimization system (Grid-VSURF) that is similar to the workflow of EHO-RF. Objective functions for both Grid-VSURF and EHO-RF were designed to perform 10-fold cross-validation to reduce over-fitting. An area in Deerfield Beach city, Florida, USA, was selected as the study area representing an urban land cover. The testing dataset used in this study represents a performance benchmarking dataset, which has been utilized in many studies. EHO-RF results showed a significant improvement with an overall map accuracy of 83.83%, compared with Grid-VSURF results with an overall map accuracy of 74.75%. The number of input features was significantly reduced by both approaches with 82.30% reduction using EHO-RF with backward elimination and 89.70% reduction using Grid-VSURF.
机译:本文旨在提供一种提高城市土地覆盖分类准确性的新方法,将大象放牧优化(EHO)算法与随机林(RF)分类器的元型优化方法相结合。该方法涉及所选城区数据集的分类器超参数和特征选择。 EHO和RF算法均在混​​合系统(EHO-RF)中用于找到具有调谐的超参数和特征(预测器变量)的最佳分类模型。 EHO-RF模型调谐随后使用RF向后特征消除,从而进一步减少了数据维度。这项工作还结合了两个众所周知的优化和特征选择算法,以提高所提出的方法的准确性评估。网格搜索优化与使用随机林(VSURF)算法的变量选择组合,以构建类似于EHO-RF工作流的优化系统(Grid-VSurf)。 Grid-VSurf和EHO-RF的客观函数旨在执行10倍的交叉验证以减少过度拟合。美国佛罗里达州德尔菲尔德海滩市的一个地区被选为代表城市陆地覆盖的研究区。本研究中使用的测试数据集代表了一种性能基准数据集,其已在许多研究中使用。 EHO-RF结果表明,与总体图精度为74.75%的总影精度相比,整体图准确度为83.83%。通过使用EHO-RF减少82.30%的方法,输入特征的数量显着降低,并使用GRID-VSURF减少89.70%。

著录项

  • 来源
    《International journal of remote sensing》 |2021年第16期|5741-5763|共23页
  • 作者单位

    Univ Connecticut Dept Geog Storrs CT 06269 USA;

    Univ Connecticut Dept Geog Storrs CT 06269 USA;

    Univ Connecticut Dept Geog Storrs CT 06269 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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