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A Semi-Automated Object-Based Gully Networks Detection Using Different Machine Learning Models: A Case Study of Bowen Catchment, Queensland, Australia

机译:基于半自动对象的沟壑网络检测使用不同的机器学习模型:澳大利亚昆士兰州鲍文集水区的案例研究

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摘要

Gully erosion is a dominant source of sediment and particulates to the Great Barrier Reef (GBR) World Heritage area. We selected the Bowen catchment, a tributary of the Burdekin Basin, as our area of study; the region is associated with a high density of gully networks. We aimed to use a semi-automated object-based gully networks detection process using a combination of multi-source and multi-scale remote sensing and ground-based data. An advanced approach was employed by integrating geographic object-based image analysis (GEOBIA) with current machine learning (ML) models. These included artificial neural networks (ANN), support vector machines (SVM), and random forests (RF), and an ensemble ML model of stacking to deal with the spatial scaling problem in gully networks detection. Spectral indices such as the normalized difference vegetation index (NDVI) and topographic conditioning factors, such as elevation, slope, aspect, topographic wetness index (TWI), slope length (SL), and curvature, were generated from Sentinel 2A images and the ALOS 12-m digital elevation model (DEM), respectively. For image segmentation, the ESP2 tool was used to obtain three optimal scale factors. On using object pureness index (OPI), object matching index (OMI), and object fitness index (OFI), the accuracy of each scale in image segmentation was evaluated. The scale parameter of 45 with OFI of 0.94, which is a combination of OPI and OMI indices, proved to be the optimal scale parameter for image segmentation. Furthermore, segmented objects based on scale 45 were overlaid with 70% and 30% of a prepared gully inventory map to select the ML models’ training and testing objects, respectively. The quantitative accuracy assessment methods of Precision, Recall, and an F1 measure were used to evaluate the model’s performance. Integration of GEOBIA with the stacking model using a scale of 45 resulted in the highest accuracy in detection of gully networks with an F1 measure value of 0.89. Here, we conclude that the adoption of optimal scale object definition in the GEOBIA and application of the ensemble stacking of ML models resulted in higher accuracy in the detection of gully networks.
机译:沟侵蚀泥沙和颗粒物的主要来源,以大堡礁(GBR)世界遗产区。我们选择了博文集水区,在伯德流域的一条支流,作为我们研究的领域;该区域与沟网络的高密度相关联。我们的目的是使用通过多源和多尺度遥感和基于地面的数据的组合的半自动化的沟壑基于对象的网络检测处理。一种先进的方法是通过用当前的机器学习(ML)模型地理基于对象的图像分析(GEOBIA)集成使用。这些包括人工神经网络(ANN),支持向量机(SVM),和随机森林(RF),和堆叠在沟壑网络检测到处理空间缩放问题的集合ML模型。谱指数,如归一化植被指数(NDVI)和地形条件因素,诸如海拔,坡度,地形湿度指数(TWI),斜率长度(SL),和曲率,从哨兵2A图像和ALOS产生分别为12-m的数字高程模型(DEM)。用于图像分割的ESP2工具用于获得三个最佳比例因子。使用对象索引纯度(OPI),对象匹配指数(OMI),和对象的健身指数(OFI),在图像分割各尺度的精度进行评价。 45 0.94 OFI,尺度参数是OPI和OMI索引的组合,被证明是用于图像分割的最佳尺度参数。此外,基于刻度45分割对象是重叠,用70%和准备好的沟壑库存地图的30%来选择ML模型的训练和测试对象,分别。准确率,召回和F1措施的定量准确评估方法来评价模型的性能。 GEOBIA的使用的45分的堆积模型整合导致在检测沟壑网络与0.89的F1量度值最高的精度。在这里,我们的结论是通过在GEOBIA最佳规模的对象定义和ML车型的整体堆叠的应用导致了检测沟壑网络的更高的精度。

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