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首页> 外文期刊>Computational intelligence and neuroscience >Automatic Impervious Surface Area Detection Using Image Texture Analysis and Neural Computing Models with Advanced Optimizers
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Automatic Impervious Surface Area Detection Using Image Texture Analysis and Neural Computing Models with Advanced Optimizers

机译:自动不透水表面积检测,使用图像纹理分析和具有先进优化器的神经计算模型

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Up-to-date information regarding impervious surface is valuable for urban planning and management. The objective of this study is to develop neural computing models used for automatic impervious surface area detection at a regional scale. To achieve this task, advanced optimizers of adaptive moment estimation (Adam), a variation of Adam called Adamax, Nesterov-accelerated adaptive moment estimation (Nadam), Adam with decoupled weight decay (AdamW), and a new exponential moving average variant (AMSGrad) are used to train the artificial neural network models employed for impervious surface detection. These advanced optimizers are benchmarked with the conventional gradient descent with momentum (GDM). Remotely sensed images collected from Sentinel-2 satellite for the study area of Da Nang city (Vietnam) are used to construct and verify the proposed approach. Moreover, texture descriptors including statistical measurements of color channels and binary gradient contour are employed to extract useful features for the neural computing model-based pattern recognition. Experimental result supported by statistical test points out that the Nadam optimizer-based neural computing model has achieved the most desired predictive accuracy for the data collected in the studied region with classification accuracy rate of 97.331%, precision?=?0.961, recall?=?0.984, negative predictive value?=?0.985, and F1 score?=?0.972. Therefore, the model developed in this study can be a helpful tool for decision-makers in the task of urban land-use planning and management.
机译:关于不透水表面的最新信息对城市规划和管理有价值。本研究的目的是开发用于在区域规模的自动不透水表面积检测的神经计算模型。为实现这项任务,Adaptive Songe估计的高级优化器(ADAM),ADAM的变化名为Adamax,Nesterov加速的自适应时刻估计(NADAM),带有解耦重量衰减(ADAMW)的ADAM,以及一个新的指数移动普通变体(AMSGRAD )用于训练用于不透水表面检测的人工神经网络模型。这些先进的优化器与常规梯度下降有基准测试,其中势头(GDM)。从Sentinel-2卫星收集的远程感测图像用于达楠市(越南)的研究区,用于构建和验证所提出的方法。此外,包括颜色通道和二进制梯度轮廓的统计测量仪的纹理描述符用于提取用于基于神经计算模型的模式识别的有用特征。统计测试支持的实验结果指出,基于NADAM优化器的神经计算模型已经实现了学习区域中收集的数据的最需要预测精度,分类精度率为97.331%,精度?=?0.961,召回?=? 0.984,负预测值?=?0.985和F1得分?=?0.972。因此,本研究中开发的模型可能是城市土地利用规划和管理任务任务中的决策者的有用工具。

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