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Hyperspectral Image Classification for Land Cover Based on an Improved Interval Type-II Fuzzy C-Means Approach

机译:基于改进区间II型模糊C-均值方法的土地覆盖物高光谱图像分类

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摘要

Few studies have examined hyperspectral remote-sensing image classification with type-II fuzzy sets. This paper addresses image classification based on a hyperspectral remote-sensing technique using an improved interval type-II fuzzy c-means (IT2FCM*) approach. In this study, in contrast to other traditional fuzzy c-means-based approaches, the IT2FCM* algorithm considers the ranking of interval numbers and the spectral uncertainty. The classification results based on a hyperspectral dataset using the FCM, IT2FCM, and the proposed improved IT2FCM* algorithms show that the IT2FCM* method plays the best performance according to the clustering accuracy. In this paper, in order to validate and demonstrate the separability of the IT2FCM*, four type-I fuzzy validity indexes are employed, and a comparative analysis of these fuzzy validity indexes also applied in FCM and IT2FCM methods are made. These four indexes are also applied into different spatial and spectral resolution datasets to analyze the effects of spectral and spatial scaling factors on the separability of FCM, IT2FCM, and IT2FCM* methods. The results of these validity indexes from the hyperspectral datasets show that the improved IT2FCM* algorithm have the best values among these three algorithms in general. The results demonstrate that the IT2FCM* exhibits good performance in hyperspectral remote-sensing image classification because of its ability to handle hyperspectral uncertainty.
机译:很少有研究使用II型模糊集检查高光谱遥感图像分类。本文介绍了一种基于高光谱遥感技术的图像分类方法,该技术采用了改进的区间II型模糊c均值(IT2FCM *)方法。在本研究中,与其他传统的基于模糊c均值的方法相比,IT2FCM *算法考虑了区间数的排序和频谱不确定性。基于使用FCM,IT2FCM和建议的改进IT2FCM *算法的高光谱数据集的分类结果表明,根据聚类精度,IT2FCM *方法发挥了最佳性能。为了验证和证明IT2FCM *的可分离性,本文采用了四种I型模糊有效性指标,并对这些模糊有效性指标进行了FCM和IT2FCM方法的比较分析。这四个指标还应用于不同的空间和光谱分辨率数据集,以分析光谱和空间比例因子对FCM,IT2FCM和IT2FCM *方法的可分离性的影响。来自高光谱数据集的这些有效性指标的结果表明,改进的IT2FCM *算法通常在这三种算法中具有最佳值。结果表明,由于IT2FCM *具有处理高光谱不确定性的能力,因此在高光谱遥感图像分类中表现出良好的性能。

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