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首页> 外文期刊>International journal of applied mechanics >Crop-Type Classification for Long-Term Modeling: An Integrated Remote Sensing and Machine Learning Approach
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Crop-Type Classification for Long-Term Modeling: An Integrated Remote Sensing and Machine Learning Approach

机译:长期建模的作物类型分类:集成遥感和机器学习方法

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Long-term temporal and spatial information of crop type supports a wide range of applications including hydrological and climatological studies. In the U.S., yearly crop data layers (CDLs) are available starting in the early 2000s and have been developed using combined field information and sets of temporal imagery from multiple sensors. Development of long-term crop-type layers similar to CDLs is restricted by reduced accessibility to imagery and the necessary auxiliary datasets. In this study, a procedure to generate a historical crop type was developed and evaluated. Time series of Normalized Difference Vegetation Index (NDVI) datasets from Landsat 5 TM sensor for the Lower Bear Creek watershed were collected and processed. Object-based pseudo phenology curves, represented by the NDVI time series, were generated using noise filtering and dimensionality standardization procedures for the years 1985, 1990, 1995, 2000, and 2005. Classifiers were developed and evaluated using random-forest machine learning algorithms and CDL datasets as the reference. Increased generalization performance was obtained when the model was developed using multi-year datasets. This can be attributed to improved crop type representation during the training phase coupled with characterization of yearly variations due to natural (weather) and anthropogenic factors (farming management). Source of uncertainties were the presence of multiple crops within objects, phenological similarities between soybean and corn/maize, and the accuracy of CDL itself. The proposed procedure supports the development of historic crop types for long-term studies at the field scale in agricultural watersheds.
机译:作物类型的长期时间和空间信息支持各种应用,包括水文和气候研究。在美国,每年庄稼数据层(CDL)可在2000年代初开始,并且已经使用组合现场信息和来自多个传感器的时间图像组开发。通过对图像和必要的辅助数据集的可访问性降低,长期作物型层的开发被限制。在本研究中,开发和评估了产生历史作物类型的程序。收集并加工了从Landsat 5 TM传感器的归一化差异植被指数(NDVI)数据集的时间序列。由NDVI时间序列代表的基于对象的伪候选曲线是使用1985年的噪声滤波和维度标准化程序而产生的,使用随机林机器学习算法和2005年和2005年的分类机。 CDL数据集作为参考。使用多年数据集启用模型时获得了增加的泛化性能。这可以归因于改善训练阶段期间的作物类型表示,其耦合的表征由于自然(天气)和人为因素(农业管理)而年的年度变化。不确定性的来源是对象中存在多种作物,大豆和玉米/玉米之间的酚类相似性,以及CDL本身的准确性。该拟议的程序支持在农业流域的田间规模上进行历史性作物类型的发展。

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