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Extracting tobacco planting areas using LSTM from time series Sentinel-1 SAR data

机译:利用LSTM从时间序列Sentinel-1 SAR数据中提取烟草种植面积

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Tobacco is an important economic crop in the southern part of China, e.g., Fujian Province. Detailed spatial information of tobacco planting is essential for a good agriculture plan and sustainable management of tobacco. Optical remote sensing images acquired in the Fujian region are heavily affected by cloud coverage due to a subtropical climate. In this study, we investigate the use of time series C-band Sentinel-1 (S1) SAR data to extract tobacco planting areas. We use a Long Short-Term Memory (LSTM) model to quantify the relations between tobacco’s phenological information and the time series of features extracted from S1 SAR data. More specifically, the VH polarization channel was used to create the time series of feature datasets. Experiments were conducted on the S1 SAR dataset acquired during the growth cycle of tobacco from 2019 to 2020 in Nanping, Fujian, China. To evaluate the effectiveness of the proposed method, we compared the extraction results with that of the conventional machine learning method, i.e., Light Gradient Boosting Machine (Light GBM). Results show that the tobacco areas extracted by the proposed LSTM method have an overall accuracy of 82.9%, based on validation samples derived from very high resolution remote sensing images and a field survey conducted in 2020. The obtained extraction accuracy is higher than that of the Light GBM method, i.e., 78.6%. We conclude that the proposed LSTM method has a high potential for mapping tobacco planting in (sub)tropical regions using time series of S1 SAR data, and can be used as an alternative method for mapping the planting of other crop types from remote sensing images.
机译:烟草是中国南方的一种重要经济作物,例如福建省。烟草种植的详细空间信息对于良好的农业规划和烟草的可持续管理至关重要。由于亚热带气候,在福建地区获取的光学遥感图像受到云层覆盖的严重影响。在本研究中,我们研究了利用时间序列C波段Sentinel-1(S1)SAR数据提取烟草种植面积的方法。我们使用长短时记忆(LSTM)模型来量化烟草物候信息与从S1 SAR数据中提取的特征时间序列之间的关系。更具体地说,VH极化通道用于创建特征数据集的时间序列。在中国福建省南平市2019年至2020年烟草生长周期期间获得的S1 SAR数据集上进行了实验。为了评估该方法的有效性,我们将提取结果与传统的机器学习方法,即光梯度增强机(Light-Gradient Boosting machine,Light-GBM)进行了比较。结果表明,基于高分辨率遥感图像的验证样本和2020年进行的实地调查,所提出的LSTM方法提取的烟草区域的总体精度为82.9%。所获得的提取准确率高于光GBM法,即78.6%。我们得出结论,所提出的LSTM方法在利用S1 SAR数据的时间序列绘制(亚热带)地区烟草种植图方面具有很高的潜力,并且可以作为从遥感图像绘制其他作物类型种植图的替代方法。

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