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Automated Paddy Rice Extent Extraction with Time Stacks of Sentinel Data: A Case Study in Jianghan Plain, Hubei, China

机译:具有前哨数据时间堆栈的自动水稻丰度提取:以湖北江汉平原为例

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Paddy rice serves as one of the most important crop food globally. The spatial distribution of paddy rice fields plays a fundamental role in describing the rural landscapes, and the precise location and extent of paddy rice fields are of key importance to analyze the subsequent resource allocation, rice yield prediction, and food security. Paddy rice has a distinct character relative to other crops in that the paddy fields need flooding during the initial period of rice seeds preparing and rice transplanting. In order to map paddy rice, remote sensing techniques have long been used to extract and monitor rice crops. Throughout many approaches, phenology-based paddy rice mapping algorithms have been introduced and tested in coarser remote sensing images such as MODIS (Moderate Resolution Imaging Spectroradiorneter), AVHRR (Advanced Very High Resolution Radiometer) and Landsat images. However, the average size of paddy rice fields is commonly smaller than 0.09 ha (e.g., the area of a Landsat pixel). Therefore, a large number of mixed pixels exist, which leads to misclassification. Meanwhile, the phenological indicators used in the previous studies such as LSWI (Land Surface Water Index), and MNDWI (Modified Normalized Difference Water Index) are not feasible to detect the land surface water content at the initial stage of paddy rice seeds preparation and transplanting. Therefore, this study first proposes a new index PMI (Perpendicular Moisture Index) to identify the irrigation in paddy rice fields, and then combines other Vegetation Indices to map paddy rice in Jianghan Plain using time stacks of Sentinel-2 imagery. The results indicates that the proposed PMI can be effectively used as phenological indicator for paddy rice mapping and the Sentinel-2 images provide more detailed spatial distributions. The accuracy assessment suggests that our method has a high accuracy with Overall Accuracy (>97%) and Kappa (>93%). This study suggests that the Sentinel-based automated paddy rice mapping algorithm could potentially and effectively be applied at large spatial scales to monitor paddy rice agriculture.
机译:水稻是全球最重要的农作物食品之一。稻田的空间分布在描述乡村景观方面起着根本性的作用,稻田的精确位置和范围对于分析随后的资源分配,水稻产量预测和粮食安全至关重要。水稻相对于其他作物具有鲜明的特点,即在准备种子和移栽水稻的初期,稻田需要淹水。为了绘制水稻图,长期以来一直使用遥感技术来提取和监测水稻作物。在许多方法中,已经引入了基于物候的水稻作图算法,并在诸如MODIS(中等分辨率成像光谱辐射仪),AVHRR(超高分辨率高分辨率辐射计)和Landsat图像等较粗糙的遥感图像中进行了测试。但是,稻田的平均大小通常小于0.09公顷(例如Landsat像素的面积)。因此,存在大量的混合像素,这导致分类错误。同时,以前的研究中使用的物候指标,例如LSWI(地表水指数)和MNDWI(修正归一化差水指数)在检测水稻种子准备和移栽初期时并不可行。 。因此,本研究首先提出了一种新的指数PMI(垂直水分指数)来识别稻田的灌溉情况,然后使用Sentinel-2影像的时间堆栈将其他植被指数组合到江汉平原的稻田中。结果表明,提出的PMI可以有效地用作水稻作图的物候指标,并且Sentinel-2图像提供了更详细的空间分布。准确性评估表明,我们的方法具有较高的准确性,总体准确性(> 97 \%)和Kappa(> 93 \%)。这项研究表明,基于Sentinel的自动水稻作图算法可以潜在且有效地在大空间范围内应用于监测水稻农业。

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