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Moist deciduous forest identification using temporal MODIS data - A comparative study using fuzzy based classifiers

机译:基于时间MODIS数据的湿落叶林识别-基于模糊分类器的比较研究。

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摘要

The two soft fuzzy based classifiers, Possibilistic c-Means (PCM) approach and Noise Clustering (NC) were compared for the Moist Deciduous Forest (MDF) identification from MODIS temporal data. Seven date temporal MODIS data were used to identify MDF and temporal Advanced Wide Field Sensor (AWiFS) data was used as reference data for testing. Simple Ratio (SR), Normalized Difference Vegetation Index (NDVI), Soil Adjusted Vegetation Index (SAVI) and Enhanced Vegetation Index 2 (EVI2) were used to generate the temporal spectral index datasets for both the MODIS and AWiFS. The parameter weighting exponent m for PCM and resolution parameter δ for NC were optimized. Results show that the optimized value of m for MDF is 2.1, while δ value is 3.6×10~4 for temporal MODIS data. For assessment of the accuracy AWiFS datasets were also optimized using entropy approach. The optimized dataset of AWiFS was then used for accuracy assessment of the soft classified outputs from MODIS using Fuzzy ERror Matrix (FERM). It was found from this study that, for PCM classifier the highest fuzzy overall accuracy of 97.44% was obtained using the SAVI for the temporal dataset 'Five' consisting to one scene of 'Full greenness', three scenes in 'Intermediate frequency stage of Onset of Greenness (OG) and End of Senescence (ES) activity' and the last image pertaining corresponds to the 'Maximum frequency stage of OG activity' as per phenology of MDF. Similarly, for NC classifier the highest fuzzy overall accuracy of 95.19% was obtained for the EVI2 with temporal dataset 'Five' consisting with two scene of 'Full greenness', two scenes in 'Intermediate frequency stage of OG and ES activity' and the last one corresponds to the 'Maximum frequency stage of OG activity'as per phenology of MDF.
机译:比较了两个基于软模糊的分类器,即可能性c均值(PCM)方法和噪声聚类(NC),以便从MODIS时间数据中识别湿落叶森林(MDF)。七个日期时间MODIS数据用于识别MDF,而时间高级广域传感器(AWiFS)数据用作测试的参考数据。简单比率(SR),归一化植被指数(NDVI),土壤调整植被指数(SAVI)和增强植被指数2(EVI2)用于生成MODIS和AWiFS的时间光谱指数数据集。优化了PCM的参数加权指数m和NC的分辨率参数δ。结果表明,MDF的m的优化值为2.1,而MODIS数据的δ值为3.6×10〜4。为了评估准确性,还使用熵方法对AWiFS数据集进行了优化。然后将优化的AWiFS数据集用于使用模糊ERror矩阵(FERM)对来自MODIS的软分类输出的准确性进行评估。从这项研究中发现,对于PCM分类器,使用SAVI可以将时间数据集“五个”(其中一个场景为“全绿色”),三个场景(在发病的中频阶段)组成的SAVI获得最高的模糊总体准确度为97.44%根据MDF的物候,“绿色(OG)和衰老结束(ES)活性”和“最后的图像”对应于“ OG活性的最大频率阶段”。同样,对于NC分类器,EVI2的时态数据集“五个”由两个“完全绿色”场景,两个“ OG和ES活动的中频阶段”场景以及最后一个场景组成的EVI2的最高模糊总准确度为95.19%。根据MDF的物候,一个对应于“ OG活性的最大频率阶段”。

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