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Analysis of IRS 1B LISS-II image using fuzzy and symbolic approach

机译:使用模糊和符号方法分析IRS 1B LISS-II图像

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Proposes a fuzzy multistage ISODATA algorithm for the classification of remotely sensed data. The concept of fuzzy set theory is used in resolving impreciseness present in the data. The proposed algorithm involves four stages; data reduction, computation of seed points, estimation of number of classes, and classification. In data reduction, the remotely sensed data are converted into symbolic form using a fuzzy /spl alpha/-cut technique, which minimizes computation time and memory. Computation of seed points and estimation of number of classes uses farthest membership function and fuzzy measure respectively. In the final stage, the remotely sensed data are classified using fuzzy equivalence relation. The classification results of remotely sensed data of an IRS 1B LISS-II image of Nagarhole forest in India are encouraging. The results signify that the algorithm is efficient with less computational time and less memory.
机译:提出了一种模糊多级ISODATA算法对遥感数据进行分类。模糊集理论的概念用于解决数据中存在的不精确性。所提出的算法包括四个阶段。数据缩减,种子点计算,类数估计和分类。在数据精简中,使用模糊/ spl alpha / -cut技术将遥感数据转换为符号形式,从而最大程度地减少了计算时间和内存。种子点的计算和类数的估计分别使用最远的隶属度函数和模糊测度。在最后阶段,使用模糊等价关系对遥感数据进行分类。印度Nagarhole森林的IRS 1B LISS-II图像的遥感数据的分类结果令人鼓舞。结果表明该算法高效,计算时间更少,内存更少。

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