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Object-Based Time-Constrained Dynamic Time Warping Classification of Crops Using Sentinel-2

机译:基于Sentinel-2的农作物基于对象的时间约束动态时间规整分类

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The increasing volume of remote sensing data with improved spatial and temporal resolutions generates unique opportunities for monitoring and mapping of crops. We compared multiple single-band and multi-band object-based time-constrained Dynamic Time Warping (DTW) classifications for crop mapping based on Sentinel-2 time series of vegetation indices. We tested it on two complex and intensively managed agricultural areas in California and Texas. DTW is a time-flexible method for comparing two temporal patterns by considering their temporal distortions in their alignment. For crop mapping, using time constraints in computing DTW is recommended in order to consider the seasonality of crops. We tested different time constraints in DTW (15, 30, 45, and 60 days) and compared the results with those obtained by using Euclidean distance or a DTW without time constraint. Best classification results were for time delays of both 30 and 45 days in California: 79.5% for single-band DTWs and 85.6% for multi-band DTWs. In Texas, 45 days was best for single-band DTW (89.1%), while 30 days yielded best results for multi-band DTW (87.6%). Using temporal information from five vegetation indices instead of one increased the overall accuracy in California with 6.1%. We discuss the implications of DTW dissimilarity values in understanding the classification errors. Considering the possible sources of errors and their propagation throughout our analysis, we had combined errors of 22.2% and 16.8% for California and 24.6% and 25.4% for Texas study areas. The proposed workflow is the first implementation of DTW in an object-based image analysis (OBIA) environment and represents a promising step towards generating fast, accurate, and ready-to-use agricultural data products.
机译:随着空间和时间分辨率的提高,遥感数据量的不断增加为作物的监测和制图提供了独特的机会。我们比较了多个单波段和多波段基于对象的时间约束动态时间规整(DTW)分类,用于基于Sentinel-2时间序列的植被指数进行作物映射。我们在加利福尼亚州和德克萨斯州的两个复杂且集约化管理的农业地区进行了测试。 DTW是一种时间灵活的方法,用于通过考虑两个时间模式在对齐方式中的时间失真来比较它们。对于作物作图,建议在计算DTW时使用时间限制,以考虑作物的季节性。我们测试了DTW(15、30、45和60天)中的不同时间限制,并将结果与​​使用欧几里德距离或没有时间限制的DTW获得的结果进行了比较。最佳分类结果是在加利福尼亚州的30天和45天的时间延迟:单波段DTW的延迟为79.5%,多波段DTW的延迟为85.6%。在得克萨斯州,单频段DTW的最佳时间为45天(89.1%),而多频段DTW的最佳结果为30天(87.6%)。使用五种植被指数而不是一种的时间信息可以使加利福尼亚州的总体准确度提高6.1%。我们讨论了DTW相异值在理解分类错误中的含义。考虑到误差的可能来源及其在整个分析过程中的传播,我们对加利福尼亚州的综合误差分别为22.2%和16.8%,对德克萨斯州研究区域的综合误差为24.6%和25.4%。拟议的工作流程是DTW在基于对象的图像分析(OBIA)环境中的第一个实现,代表了朝着生成快速,准确和即用型农业数据产品迈出的有希望的一步。

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