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A novel QIM-DCT based fusion approach for classification of remote sensing images via PSO and SVM models

机译:基于新的QIM-DCT基于遥感图像的偏远图像分类,通过PSO和SVM模型

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Fusion of panchromatic and multispectral images has become a research interest for the classification of remote sensing images. The spectral and spatial resolutions of different images give better information with the aid of image classification. However, fusing pixels for various satellite images is difficult due to the nature of original image consists of complex information. Similarly, most of the existing fusion algorithms implement a unified processing over the whole part of the image, thereby leaving certain important needs out of consideration. The main aim of our proposed approach is to fuse the images by gathering all important information from multiple images with minimum errors. In this paper, we propose a novel quantization index modulation with discrete contourlet transform-based fusion approach for classification of remote sensing images (LISS IV sensor). In order to improve the image fusion performance, we eliminate certain noises (salt, pepper, and Gaussian) using Bayesian filter with Adaptive Type-2 Fuzzy System. After image fusion, we make image classification by two steps of processes including deep multi-feature extraction and feature selection. Multiple features such as spectral, shape, global and local features are extracted using Affine Transformation (0 degrees, 90 degrees, 180 degrees, and 270 degrees), and then the best set of features are chosen by mutual information and maximal information coefficients. Finally, the image is classified into seven classes using PSO and SVM namely Urban, Vegetation, Wetland, Tank, Water Area, Bare Land, and Roadways. MATLAB R2017b has been used for evaluation of the LISS IV images. Experimental results revealed that our proposed approach is very effective in terms of their classification accuracy.
机译:融合的全奏和多光谱图像已成为遥感图像分类的研究兴趣。不同图像的光谱和空间分辨率借助图像分类提供更好的信息。然而,由于原始图像的性质由复杂信息组成,各种卫星图像的定影像素难以。类似地,大多数现有融合算法在图像的整个部分上实现了统一的处理,从而留出了某些重要的需要。我们提出方法的主要目的是通过从多个图像收集最小错误的所有重要信息来融合图像。在本文中,我们提出了一种新的量化指标调制,利用基于离散的Contourlet变换的融合方法进行了遥感图像的分类(Liss IV传感器)。为了改善图像融合性能,我们使用具有自适应类型-2模糊系统的贝叶斯滤波器消除某些噪声(盐,胡椒和高斯)。在图像融合之后,通过两个过程进行图像分类,包括深度多重特征提取和特征选择。使用仿射变换(0度,90度,180度和270度)提取多个特征,如透射频率,形状,全局和局部特征,然后通过相互信息和最大信息系数选择最佳的特征集。最后,使用PSO和SVM将图像分为七个课程,即城市,植被,湿地,坦克,水域,裸机和道路。 MATLAB R2017B已被用于评估LISS IV图像。实验结果表明,我们所提出的方法在分类准确性方面非常有效。

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