Ab'/> Sentinel-2 cropland mapping using pixel-based and object-based time-weighted dynamic time warping analysis
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Sentinel-2 cropland mapping using pixel-based and object-based time-weighted dynamic time warping analysis

机译:Sentinel-2裁剪映射使用基于像素和基于对象的时加权动态时间翘曲分析

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AbstractEfficient methodologies for mapping croplands are an essential condition for the implementation of sustainable agricultural practices and for monitoring crops periodically. The increasing spatial and temporal resolution of globally available satellite images, such as those provided by Sentinel-2, creates new possibilities for generating accurate datasets on available crop types, in ready-to-use vector data format. Existing solutions dedicated to cropland mapping, based on high resolution remote sensing data, are mainly focused on pixel-based analysis of time series data. This paper evaluates how a time-weighted dynamic time warping (TWDTW) method that uses Sentinel-2 time series performs when applied to pixel-based and object-based classifications of various crop types in three different study areas (in Romania, Italy and the USA). The classification outputs were compared to those produced by Random Forest (RF) for both pixel- and object-based image analysis units. The sensitivity of these two methods to the training samples was also evaluated. Object-based TWDTW outperformed pixel-based TWDTW in all three study areas, with overall accuracies ranging between 78.05% and 96.19%; it also proved to be more efficient in terms of computational time. TWDTW achieved comparable classification results to RF in Romania and Italy, but RF achieved better results in the USA, where the classified crops present high intra-class spectral variability. Additionally, TWDTW proved to be less sensitive in relation to the training samples. This is an important asset in areas where inputs for training samples are limited.展开▼
机译:<![cdata [ 抽象 用于映射耕地的高效方法是实施可持续农业实践和定期监测庄稼的重要条件。全局卫星图像的空间和时间分辨率增加,例如由Sentinel-2提供的那些,可以在现成的矢量数据格式中产生用于在可用作物类型上产生准确数据集的新可能性。基于高分辨率遥感数据的现有解决方案专用于裁剪映射,主要集中在时间序列数据的基于像素的分析。本文评估了在三个不同研究区域(在罗马尼亚,意大利和意大利的各种作物类型的基于像素的基于物种类型的基于物种类型的基于物种类型和对象的分类时,评估使用Sentinel-2时间序列的时间加权动态时间翘曲(TWDTW)方法。(在罗马尼亚,意大利和意大利美国)。将分类输出与随机森林(RF)产生的分类输出进行比较,用于基于像素和对象的图像分析单元。还评估了这两种方法对训练样品的敏感性。基于对象的TWDTW在所有三个研究领域的基于像素的TWDTW,整体精度范围在78.05%和96.19%之间;它还证明在计算时间方面更有效。 TWDTW对罗马尼亚和意大利的RF实现了可比较的分类结果,但RF在美国实现了更好的结果,分类作物呈现出高级别的谱变异性。此外,TWDTW证明与培训样本不太敏感。这是培训样本输入有限的区域中的重要资产。

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