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Entropy based noise clustering soft classification method for identification of wheat crop using time series MODIS data

机译:基于时间序列MODIS数据的基于熵的噪声聚类软分类识别小麦

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In this study, time series MODIS-Terra MOD13Q1 data have been used for the identification of wheat crop in a test site in the state of Haryana in India. Wheat is the dominating crop in this region having large and homogeneous fields. A total of seven date data have been taken between November 2011 to April 2012, corresponding to the different phenological stages of wheat crop of this study area. The Normalized Difference Vegetation Index (NDVI) and Soil Adjusted Vegetation Index (SAVI) have been generated for each date MODIS data. Further, these indices were then used to make the temporal indices sets. The Transformed Divergence (TD) separability based optimized sets of temporal spectral indices were then used for classification of wheat crop using the supervised entropy based noise clustering soft classification algorithm. For the assessment of accuracy the Receiver Operating Characteristic (ROC) analysis has been used. It is observed that the highest area under ROC curve is found for NDVI ‘Three’ date temporal dataset combination, which is a combination of sowing, flowering and maturity stages of wheat phenology. Further, the inclusions of milking stage and maturity stage data has decreased the accuracy. Thus, it may be concluded that ‘Three’ date combination of NDVI generated from MODIS yields best result for identification of wheat crop using entropy based noise clustering classifier.
机译:在这项研究中,时间序列MODIS-Terra MOD13Q1数据已用于在印度哈里亚纳邦的一个试验场中鉴定小麦作物。小麦是该地区具有大片均匀土地的主要农作物。 2011年11月至2012年4月之间共采集了七个日期数据,分别对应于该研究区域小麦作物的不同物候期。已为每个日期的MODIS数据生成了标准化差异植被指数(NDVI)和土壤调整植被指数(SAVI)。此外,这些索引随后被用于制作时间索引集。然后,使用基于监督熵的基于噪声聚类的软分类算法,将基于变换散度(TD)可分离性的时间谱索引优化集用于小麦作物的分类。为了评估准确性,使用了接收器工作特性(ROC)分析。可以观察到,NDVI“三”日期时间数据集组合在ROC曲线下找到了最高区域,该组合是小麦物候的播种,开花和成熟阶段的组合。此外,挤奶阶段和成熟阶段数据的包含降低了准确性。因此,可以得出结论,使用基于熵的噪声聚类分类器,从MODIS生成的NDVI的“三”日期组合产生的最佳识别小麦作物的结果。

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