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Image Segmentation Parameter Selection and Ant Colony Optimization for Date Palm Tree Detection and Mapping from Very-High-Spatial-Resolution Aerial Imagery

机译:图像分割参数选择和蚁群优化枣棕榈树检测和远空分辨率空中图像的绘图

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摘要

Accurate mapping of date palm trees is essential for their sustainable management, yield estimation, and environmental studies. In this study, we integrated geographic object-based image analysis, class-specific accuracy measures, fractional factorial design, metaheuristic feature-selection technique, and rule-based classification to detect and map date palm trees from very-high-spatial-resolution (VHSR) aerial images of two study areas. First, multiresolution segmentation was optimized through the synergy of the F1-score accuracy measure and the robust Taguchi design. Second, ant colony optimization (ACO) was adopted to select the most significant features. Out of 31 features, only 12 significant color invariants and textural features were selected. Third, based on the selected features, the rule-based classification with the aid of a decision tree algorithm was applied to extract date palm trees. The proposed methodology was developed on a subset of the first study area, and ultimately applied to the second study area to investigate its efficiency and transferability. To evaluate the proposed classification scheme, various supervised object-based algorithms, namely random forest (RF), support vector machine (SVM), and k-nearest neighbor (k-NN), were applied to the first study area. The result of image segmentation optimization demonstrated that segmentation optimization based on an integrated F1-score class-specific accuracy measure and Taguchi statistical design showed improvement compared with objective function, along with the Taguchi design. Moreover, the result of the feature selection by ACO outperformed, with almost 88% overall accuracy, several feature-selection techniques, such as chi-square, correlation-based feature selection, gain ratio, information gain, support vector machine, and principal component analysis. The integrated framework for palm tree detection outperformed RF, SVM, and k-NN classification algorithms with an overall accuracy of 91.88% and 87.03%, date palm class-specific accuracies of 0.91 and 0.89, and kappa coefficients of 0.90 and 0.85 for the first and second study areas, respectively. The proposed integrated methodology demonstrated a highly efficient and promising tool to detect and map date palm trees from VHSR aerial images.
机译:准确的棕榈树映射对于可持续管理,产量估计和环境研究至关重要。在这项研究中,我们集成了基于地理对象的图像分析,类特定的精度措施,分数阶乘设计,沟培特征选择技术,以及基于规则的分类,以从非常高空间分辨率( VHSR)两个研究领域的空中图像。首先,通过F1评分精度测量的协同作用和强大的Taguchi设计来优化多分辨率分割。其次,采用蚁群优化(ACO)选择最重要的特征。在31个功能中,仅选择了12种显着的颜色不变性和纹理功能。第三,基于所选特征,应用了借助于决策树算法的基于规则的分类来提取日期棕榈树。所提出的方法是在第一研究区域的子集上开发的,最终应用于第二研究区域以研究其效率和可转移性。为了评估所提出的分类方案,应用于第一研究区域的各种受监督的对象基算法,即随机森林(RF),支持向量机(SVM)和K最近邻(K-NN)。图像分割优化的结果表明,基于集成的F1分数类专用精度测量和Taguchi统计设计的分割优化显示出与目标函数相比的改进以及TAGUCHI设计。此外,ACO特征选择的结果优于优势,总体精度近88%,若干特征选择技术,如Chi-Square,基于相关的特征选择,增益比,信息增益,支持向量机和主组件分析。 Palm树检测的综合框架优于RF,SVM和K-NN分类算法,整体准确性为91.88%和87.03%,日期掌上类别的精度为0.91和0.89,而第一个kappa系数为0.90和0.85和第二学习领域。拟议的综合方法显示了一种高效和有前途的工具,可以从VHSR航空图像中检测和映射日期棕榈树。

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