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Mapping National-Scale Croplands in Pakistan by Combining Dynamic Time Warping Algorithm and Density-Based Spatial Clustering of Applications with Noise

机译:通过将动态时间翘曲算法和基于密度的空间聚类与噪声相结合,在巴基斯坦进行映射国家规模的农作物

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摘要

Croplands are commonly mapped using time series of remotely sensed images. The dynamic time warping (DTW) algorithm is an effective method for realizing this. However, DTW algorithm faces the challenge of capturing complete and accurate representative cropland time series on a national scale, especially in Asian countries where climatic and topographic conditions, cropland types, and crop growth patterns vary significantly. This study proposes an automatic cropland extraction method based on the DTW algorithm and density-based spatial clustering of applications with noise (DBSCAN), hereinafter referred to as ACE-DTW, to map croplands in Pakistan in 2015. First, 422 frames of multispectral Landsat-8 satellite images were selected from the Google Earth Engine to construct monthly normalized difference vegetation index (NDVI) time series. Next, a total of 2409 training samples of six land cover types were generated randomly and explained visually using high-resolution remotely sensed images. Then, a multi-layer DBSCAN was used to classify NDVI time series of training samples into different categories automatically based on their pairwise DTW distances, and the mean NDVI time series of each category was used as the standard time series to represent the characteristics of that category. These standard time series attempted to represent cropland information and maximally distinguished croplands from other possible interference land cover types. Finally, image pixels were classified as cropland or non-cropland based on their DTW distances to the standard time series of the six land cover types. The overall cropland extraction accuracy of ACE-DTW was 89.7%, which exceeded those of other supervised classifiers (classification and regression trees: 78.2%; support vector machines: 78.8%) and existing global cropland datasets (Finer Resolution Observation and Monitoring of Global Land Cover: 87.1%; Global Food Security Support Analysis Data: 83.1%). Further, ACE-DTW could produce relatively complete time series of variable cropland types, and thereby provide a significant advantage in mountain regions with small, fragmented croplands and plain regions with large, high-density patches of croplands.
机译:农田通常使用远程感测图像的时间序列映射。动态时间翘曲(DTW)算法是实现这一点的有效方法。然而,DTW算法面临着捕获全国范围内的完整和准确代表性的农田时间序列的挑战,特别是在气候和地形条件,农田类型和作物生长模式的亚洲国家。本研究提出了一种基于DTW算法和基于密度的空间聚类的自动耕地提取方法,以及噪声(DBSCAN)的应用,下文中称为ACE-DTW,在2015年映射巴基斯坦的农作物。第一,422帧的多光谱LANDSAT -8卫星图像选自谷歌地球发动机,以构建每月归一化差异植被指数(NDVI)时间序列。接下来,在随机生成和在视觉上使用高分辨率感测图像来生成2409种六种陆地覆盖类型的训练样本。然后,使用多层DBSCAN将NDVI时间序列基于它们的成对DTW距离自动将NDVI时间序列分类为不同类别,并且每个类别的平均NDVI时间序列用作标准时间序列来表示该特性的标准时间序列类别。这些标准时间序列试图代表农田信息和最大卓越的农田,来自其他可能的干扰陆地覆盖类型。最后,根据其DTW距离到六种陆地覆盖类型的标准时间序列,图像像素被归类为农田或非农田。 ACE-DTW的整体耕地提取精度为89.7%,超过其他受监督分类器(分类和回归树木:78.2%;支持向量机:78.8%)和现有的全球田间数据集(更精细的分辨率观察和全球土地监测封面:87.1%;全球食品安全支持分析数据:83.1%)。此外,ACE-DTW可以产生相对完整的变量裁幅类型的时间序列,从而在山区内提供了具有小,碎片的农作物和普通农田的普通区域的山区内部的显着优势。

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