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Comparison of land use classification based on convolutional neural network

机译:基于卷积神经网络的土地利用分类比较

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摘要

Deep learning methods have been developed and widely used in land use classification with remote sensing images. In addition, due to the different datasets used in different studies, there is a lack of direct comparison between different deep learning model applications in land use classification. The open source dataset DeepSat was used to build and test a convolutional neural network (CNN) model. The convolution kernels in the model were extracted to further study the specific features learned by the deep learning model. In addition, different CNN-based models were compared to explore the impacts of model structures on model accuracy. The major conclusions from the research are: (1) CNN model is effective in land use classification, with an accuracy of 0.9998 and 0.9991 for the SAT-4 and SAT-6 data, respectively; (2) CNN does have a "learning" ability that can extract the most critical and effective information from training datasets; and (3) for remote sensing land use classification, increasing the number of convolution kernels is better than adding more convolutional layers. Max pooling is better than average pooling. In addition, a localized response normalized layer can also improve model accuracy. (C) 2020 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:深入学习方法已经开发并广泛用于遥感图像的土地使用分类。此外,由于不同研究中使用的不同数据集,在土地使用分类中不同的深度学习模型应用之间缺乏直接比较。开源数据集DeepSat用于构建和测试卷积神经网络(CNN)模型。提取模型中的卷积内核以进一步研究深度学习模型学习的具体特征。此外,比较了不同的基于CNN的模型,以探讨模型结构对模型精度的影响。研究中的主要结论是:(1)CNN模型在土地使用分类中有效,精度为0.9998和0.9991,分别用于SAT-4和SAT-6数据; (2)CNN确实有一个“学习”能力,可以从训练数据集中提取最关键和有效的信息; (3)对于遥感土地使用分类,增加卷积核数量优于添加更多卷积层。最大池优于平均池。另外,局部响应归一化层也可以提高模型精度。 (c)2020光学仪表工程师协会(SPIE)

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