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A Convolutional Neural Network for Coastal Classification Based on ALOS and NOAA Satellite Data

机译:基于ALOS和NOAA卫星数据的沿海分类卷积神经网络

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Although coastal classification has been attended in recent years, it is still a complicated problem in quantitative geomorphological and hydrological sciences. Nowadays, the integration of deep learning in remote sensing and GIS analysis can quickly classify and detect different characteristics on both land and sea. Therefore, the authors proposed the use of a convolutional neural network (ConvNet) for coastal classification based on these technologies and geomorphic profile graphs. The primary input data is digital elevation/depth models obtained from ALOS and NOAA satellite. Eight hundred coastal samples representing eight types of coasts taken along the coastline in Vietnam were used for training and testing various ConvNets. As a result, three ConvNet models using three different optimizer functions were developed with the accuracies of about 98 & x0025; and low values of the loss function. These models were used to classify 1029 in 1150 coasts (equal to 89 & x0025;) in Vietnam. Nearly 11 & x0025; of Vietnamese coasts could not be defined by three ConvNet models due to their complex geomorphic profile graphs, and require assessments of other natural components. The trained ConvNet models can potentially update new coastal types in different tropical countries towards coastal classification on national and global scales.
机译:近年来沿海分类已经出席,仍然是定量地貌和水文科学的复杂问题。如今,深度学习在遥感和GIS分析中的集成可以快速分类和检测陆地和海洋的不同特征。因此,作者提出了基于这些技术和地貌配置图的沿海分类使用卷积神经网络(Convnet)。主要输入数据是从ALOS和NOAA卫星获得的数字高度/深度模型。八百个沿海样本代表沿越南海岸线拍摄的八种沿海的海岸用于培训和测试各种探伤。结果,使用三种不同优化器功能的三种ConvNet型号具有约98&x0025的精度;损失功能的低值。这些模型用于在越南(等于89&x0025)的1150海岸(等于89&x0025)的1029。近11 x0025;由于其复杂的地貌配置图,越南海岸无法由三种ConvNet模型定义,并且需要评估其他自然成分。训练有素的Convnet模型可能会在不同的热带国家更新新的沿海类型,以沿着国家和全球规模的沿海分类。

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