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Mapping Heterogeneous Urban Landscapes from the Fusion of Digital Surface Model and Unmanned Aerial Vehicle-Based Images Using Adaptive Multiscale Image Segmentation and Classification

机译:使用自适应多尺度图像分割和分类,从数字表面模型和无人空中车辆的图像融合中映射异构城市景观

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摘要

Considering the high-level details in an ultrahigh-spatial-resolution (UHSR) unmanned aerial vehicle (UAV) dataset, detailed mapping of heterogeneous urban landscapes is extremely challenging because of the spectral similarity between classes. In this study, adaptive hierarchical image segmentation optimization, multilevel feature selection, and multiscale (MS) supervised machine learning (ML) models were integrated to accurately generate detailed maps for heterogeneous urban areas from the fusion of the UHSR orthomosaic and digital surface model (DSM). The integrated approach commenced through a preliminary MS image segmentation parameter selection, followed by the application of three supervised ML models, namely, random forest (RF), support vector machine (SVM), and decision tree (DT). These models were implemented at the optimal MS levels to identify preliminary information, such as the optimal segmentation level(s) and relevant features, for extracting 12 land use/land cover (LULC) urban classes from the fused datasets. Using the information obtained from the first phase of the analysis, detailed MS classification was iteratively conducted to improve the classification accuracy and derive the final urban LULC maps. Two UAV-based datasets were used to develop and assess the effectiveness of the proposed framework. The hierarchical classification of the pilot study area showed that the RF was superior with an overall accuracy (OA) of 94.40% and a kappa coefficient (K) of 0.938, followed by SVM (OA = 92.50% and K = 0.917) and DT (OA = 91.60% and K = 0.908). The classification results of the second dataset revealed that SVM was superior with an OA of 94.45% and K of 0.938, followed by RF (OA = 92.46% and K = 0.916) and DT (OA = 90.46% and K = 0.893). The proposed framework exhibited an excellent potential for the detailed mapping of heterogeneous urban landscapes from the fusion of UHSR orthophoto and DSM images using various ML models.
机译:考虑到超高空间分辨率(UHSR)无人机(UHSR)数据集中的高级细节,由于类之间的光谱相似性,异构城市景观的详细映射非常具有挑战性。在本研究中,自适应分层图像分割优化,多级特征选择和多尺度(MS)监督机器学习(ML)模型被集成,以准确地从UHSR正交和数字表面模型的融合中生成异构城市区域的详细地图(DSM )。通过初步MS图像分割参数选择,集成方法开始,其次是应用三个监督ML模型,即随机林(RF),支持向量机(SVM)和决策树(DT)。这些模型在最佳MS级别实现,以识别初步信息,例如最佳分割级别和相关特征,用于从融合数据集中提取12个土地使用/陆地覆盖(LULC)城市类。使用从分析的第一阶段获得的信息,迭代地进行详细的MS分类,以提高分类准确性并导出最终的城市LULC地图。基于UV的数据集用于开发和评估所提出的框架的有效性。试点研究区域的分层分类表明,RF的总精度(OA)为94.40%,κ系数(k)为0.938,其次是SVM(OA = 92.50%和K = 0.917)和DT( OA = 91.60%和k = 0.908)。第二个数据集的分类结果显示,SVM优异,OA为94.45%,K为0.938,其次是RF(OA = 92.46%和K = 0.916)和DT(OA = 90.46%和K = 0.893)。该框架展示了使用各种ML型号的UHSR官员和DSM图像融合的异构城市景观的详细映射。

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