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Noise Clustering-Based Hypertangent Kernel Classifier for Satellite Imaging Analysis

机译:基于噪声聚类的卫星成像分析的超天化内核分类器

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摘要

The classification accuracy and the computational complexity are degraded by the occurrence of nonlinear data and mixed pixels present in satellite images. Therefore, the kernel-based fuzzy classifiers are required for the separation of linear and nonlinear data. This paper presents two classifiers for handling the nonlinear separable data and mixed pixels. The classifiers, noise clustering (NC) and NC with hypertangent kernels (NCH), are used for handling these problems in the satellite images. In this study, a comparative study between NC and NCH has been carried out. The membership values of KFCM are obtained to produce the final result. It is found that the proposed classifiers achieved good accuracy. It is observed that there is an enhancement in the classification accuracy by using NC and NCH. The maximum accuracy achieved for NC and NCH is 75% at delta = 0.7, delta = 0.5, respectively. After comparing both the results, it has identified that NCH gives better results. The classification of Formosat-2 data is done by obtaining optimized values of m and delta to generate the fractional outputs. The classification accuracy is performed by using the error matrix with the incorporation of hard classifier and alpha-cut.
机译:分类精度和计算复杂性通过卫星图像中存在的非线性数据和混合像素的发生而劣化。因此,基于内核的模糊分类器是用于分离线性和非线性数据所必需的。本文呈现了两个用于处理非线性可分离数据和混合像素的分类器。具有超明内核(NCH)的分类器,噪声聚类(NC)和NC用于处理卫星图像中的这些问题。在这项研究中,已经进行了NC和NCH的比较研究。获得KFCM的隶属值以产生最终结果。结果发现,所提出的分类器实现了良好的准确性。观察到通过使用NC和NCH,可以提高分类精度。对于NC和NCH实现的最大精度分别在Delta = 0.7,Delta = 0.5处为75%。在比较结果后,它已识别出NCH提供更好的结果。通过获得M和DELTA的优化值来生成分数输出来完成Formosat-2数据的分类。通过使用硬分类器和alpha-cut掺入误差矩阵来执行分类准确性。

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