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Mapping Paddy Rice Using a Convolutional Neural Network (CNN) with Landsat 8 Datasets in the Dongting Lake Area, China

机译:利用卷积神经网络(CNN)和Landsat 8数据集绘制水稻在洞庭湖地区的水稻分布图

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Rice is one of the world’s major staple foods, especially in China. Highly accurate monitoring on rice-producing land is, therefore, crucial for assessing food supplies and productivity. Recently, the deep-learning convolutional neural network (CNN) has achieved considerable success in remote-sensing data analysis. A CNN-based paddy-rice mapping method using the multitemporal Landsat 8, phenology data, and land-surface temperature (LST) was developed during this study. First, the spatial–temporal adaptive reflectance fusion model (STARFM) was used to blend the moderate-resolution imaging spectroradiometer (MODIS) and Landsat data for obtaining multitemporal Landsat-like data. Subsequently, the threshold method is applied to derive the phenological variables from the Landsat-like (Normalized difference vegetation index) NDVI time series. Then, a generalized single-channel algorithm was employed to derive LST from the Landsat 8. Finally, multitemporal Landsat 8 spectral images, combined with phenology and LST data, were employed to extract paddy-rice information using a patch-based deep-learning CNN algorithm. The results show that the proposed method achieved an overall accuracy of 97.06% and a Kappa coefficient of 0.91, which are 6.43% and 0.07 higher than that of the support vector machine method, and 7.68% and 0.09 higher than that of the random forest method, respectively. Moreover, the Landsat-derived rice area is strongly correlated ( R 2 = 0.9945) with government statistical data, demonstrating that the proposed method has potential in large-scale paddy-rice mapping using moderate spatial resolution images.
机译:大米是世界上主要的主食之一,尤其是在中国。因此,对稻米产地进行高度准确的监测对于评估粮食供应和生产力至关重要。最近,深度学习卷积神经网络(CNN)在遥感数据分析中取得了相当大的成功。在这项研究中,开发了使用多时态Landsat 8,物候数据和地表温度(LST)的基于CNN的稻米作图方法。首先,使用时空自适应反射融合模型(STARFM)将中分辨率成像光谱仪(MODIS)和Landsat数据进行混合,以获得类似Landsat的多时相数据。随后,使用阈值方法从类Landsat(归一化植被指数)NDVI时间序列中导出物候变量。然后,采用广义的单通道算法从Landsat 8导出LST。最后,使用多时相Landsat 8光谱图像,结合物候和LST数据,使用基于补丁的深度学习CNN提取水稻信息。算法。结果表明,所提方法的总体准确度为97.06%,Kappa系数为0.91,比支持向量机方法高6.43%和0.07,比随机森林法高7.68%和0.09。 , 分别。此外,Landsat衍生的稻米面积与政府统计数据高度相关(R 2 = 0.9945),表明该方法在使用中等空间分辨率图像的大米稻作图中具有潜力。

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