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Crop type mapping in a highly fragmented and heterogeneous agricultural landscape: A case of central Iran using multi-temporal Landsat 8 imagery

机译:高度分散且异质的农业景观中的作物类型映射:使用多时态Landsat 8影像的伊朗中部案例

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Crop type mapping and studying the dynamics of agricultural fields in arid and semi-arid environments are of high importance since these ecosystems have witnessed an unprecedented rate of area decline during the last decades. Crop type mapping using medium spatial resolution imagery data has been considered as one of the most important management tools. Remotely sensed data provide reliable, cost and time effective information for monitoring, analyzing and mapping of agricultural land areas. This research was conducted to explore the utility of Landsat 8 imagery data for crop type mapping in a highly fragmented and heterogeneous agricultural landscape in Najaf-Abad Hydrological Unit, Iran. Based on the phenological information from long-term field surveys, five Landsat 8 image scenes (from March to October) were processed to classify the main crop types. In this regard, wheat, barley, alfalfa, and fruit trees have been classified applying inventive decision tree algorithms and Support Vector Machine was used to categorize rice, potato, vegetables, and greenhouse vegetable crops. Accuracy assessment was then undertaken based on spring and summer crop maps (two confusion matrices) that resulted in Kappa coefficients of 0.89. The employed images and classification methods could form a basis for better crop type mapping in central Iran that is undergoing severe drought condition. (C) 2016 Elsevier B.V. All rights reserved.
机译:作物类型制图和研究干旱和半干旱环境中的农田动态非常重要,因为在过去的几十年中,这些生态系统见证了前所未有的面积下降速度。使用中等空间分辨率图像数据的作物类型映射已被视为最重要的管理工具之一。遥感数据为监视,分析和绘制农用地提供了可靠,成本和时间有效的信息。进行这项研究的目的是探索Landsat 8影像数据在伊朗纳杰夫-阿巴德水文部门高度破碎且异质的农业景观中用于作物类型制图的实用性。根据长期田间调查的物候信息,处理了5个Landsat 8影像场景(3月至10月)以对主要农作物类型进行分类。在这方面,已经使用发明的决策树算法对小麦,大麦,苜蓿和果树进行了分类,并且使用支持向量机对水稻,马铃薯,蔬菜和大棚蔬菜作物进行了分类。然后根据春季和夏季作物图(两个混淆矩阵)进行准确性评估,得出的Kappa系数为0.89。所采用的图像和分类方法可以为在遭受严重干旱的伊朗中部更好的作物类型作图奠定基础。 (C)2016 Elsevier B.V.保留所有权利。

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