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Integrated Airborne LiDAR Data and Imagery for Suburban Land Cover Classification Using Machine Learning Methods

机译:集成机载LiDAR数据和图像用于使用机器学习方法对郊区土地覆盖进行分类

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摘要

It is valuable to study the land use/land cover (LULC) classification for suburbs. The fusion of Light Detection and Ranging (LiDAR) data and aerial imagery is often regarded as an effective method for the LULC classification; however, more in-depth analysis would be required to explore effective information for enhancing the suburban LULC classification. In this study, first, both aerial imageries and point clouds were simultaneously collected. Then, LiDAR-derived models, i.e., normalized digital surface model (nDSM) and surface intensity model (IM), were generated from the elevation and intensity of point clouds. Further, considering the surface characteristics of ground objects in suburb, we proposed a new LiDAR-derived model, namely surface roughness model (RM), to reveal the degree of surface fluctuations. Additionally, various combinations of aerial imageries and the LiDAR-derived data were used to analyze the effects of multi-variable fusion under different scenarios and optimize the multi-variable integration for suburban LULC classification. The mean decrease impurity method was used to identify the importance of variables; three machine learning classifiers, i.e., random forest (RF), k-nearest neighbor (KNN) and artificial neural network (ANN) were adopted in various scenarios. The results were as follows. The fusion of aerial imagery and all the LiDAR-derived models, i.e., nDSM, RM and IM, with RF classifier performs best in the suburban LULC classification (overall accuracy = 84.75%, kappa coefficient = 0.80). Variable importance analysis shows that nDSM has the highest variable importance proportion (VIP) value, followed by RM, IM, and spectral information, indicating the feasibility of this proposed LiDAR-derived model-RM. This research presents effective methods relating to the application of aerial imagery and LiDAR-derived model for the complex suburban surface scenarios.
机译:研究郊区的土地利用/土地覆被(LULC)分类非常有价值。光检测和测距(LiDAR)数据与航拍图像的融合通常被认为是LULC分类的有效方法。但是,将需要进行更深入的分析,以探索有效的信息,以增强郊区的LULC分类。在这项研究中,首先,同时收集了航空影像和点云。然后,根据点云的高度和强度生成LiDAR衍生的模型,即归一化数字表面模型(nDSM)和表面强度模型(IM)。此外,考虑到郊区地面物体的表面特征,我们提出了一个新的LiDAR衍生模型,即表面粗糙度模型(RM),以揭示表面波动的程度。此外,航空影像和LiDAR衍生数据的各种组合被用于分析在不同情况下的多变量融合的效果,并优化了郊区LULC分类的多变量集成。用平均减少杂质法确定变量的重要性。在各种场景中采用了三个机器学习分类器,即随机森林(RF),k最近邻(KNN)和人工神经网络(ANN)。结果如下。在郊区LULC分类中,航空影像和所有LiDAR衍生模型(即nDSM,RM和IM)与RF分类器的融合效果最好(总体精度= 84.75%,kappa系数= 0.80)。可变重要性分析表明,nDSM具有最高的可变重要性比例(VIP)值,其次是RM,IM和频谱信息,表明此拟议的LiDAR衍生模型RM的可行性。这项研究提出了与航空影像和LiDAR派生模型在复杂郊区表面场景中的应用有关的有效方法。

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