Spectral-spatial classification fusion for hyperspectral images in the probabilistic framework via arithmetic optimization Algorithm

Reza Seifi Majdar, H. Ghassemian
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引用次数: 4

Abstract

ABSTRACT Spectral data and spatial information such as shape and texture features can be fused to improve the classification of the hyperspectral images. In this paper, a novel approach of the spectral and spatial features (texture features and shape features) fusion in the probabilistic framework is proposed. The Gabor filters are applied to obtain the texture features and the morphological profiles (MPs) are used to obtain the shape features. These features are classified separately by the support vector machine (SVM); therefore, the per-pixel probabilities can be estimated. A novel meta-heuristic optimization method called Arithmetic Optimization Algorithm (AOA) is used to weighted combinations of these probabilities. Three parameters, α, β and γ determine the weight of each feature in the combination. The optimal value of these parameters is calculated by AOA. The proposed method is evaluated on three useful hyperspectral data sets: Indian Pines, Pavia University and Salinas. The experimental results demonstrate the effectiveness of the proposed combination in hyperspectral image classification, particularly with few labelled samples. As well as, this method is more accurate than a number of new spectral-spatial classification methods.
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基于算术优化算法的概率框架下高光谱图像光谱空间分类融合
摘要可以将光谱数据与形状和纹理特征等空间信息融合,以提高高光谱图像的分类效果。本文提出了一种在概率框架下进行光谱和空间特征(纹理特征和形状特征)融合的新方法。Gabor滤波器用于获得纹理特征,形态轮廓(MP)用于获得形状特征。这些特征由支持向量机(SVM)单独分类;因此,可以估计每像素的概率。一种新的元启发式优化方法称为算术优化算法(AOA),用于加权这些概率的组合。α、β和γ三个参数决定了组合中每个特征的权重。这些参数的最优值是通过AOA来计算的。在三个有用的高光谱数据集上对所提出的方法进行了评估:印度松树、帕维亚大学和萨利纳斯。实验结果证明了所提出的组合在高光谱图像分类中的有效性,特别是在标记样本较少的情况下。此外,该方法比许多新的光谱空间分类方法更准确。
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来源期刊
CiteScore
5.00
自引率
0.00%
发文量
10
期刊介绍: International Journal of Image and Data Fusion provides a single source of information for all aspects of image and data fusion methodologies, developments, techniques and applications. Image and data fusion techniques are important for combining the many sources of satellite, airborne and ground based imaging systems, and integrating these with other related data sets for enhanced information extraction and decision making. Image and data fusion aims at the integration of multi-sensor, multi-temporal, multi-resolution and multi-platform image data, together with geospatial data, GIS, in-situ, and other statistical data sets for improved information extraction, as well as to increase the reliability of the information. This leads to more accurate information that provides for robust operational performance, i.e. increased confidence, reduced ambiguity and improved classification enabling evidence based management. The journal welcomes original research papers, review papers, shorter letters, technical articles, book reviews and conference reports in all areas of image and data fusion including, but not limited to, the following aspects and topics: • Automatic registration/geometric aspects of fusing images with different spatial, spectral, temporal resolutions; phase information; or acquired in different modes • Pixel, feature and decision level fusion algorithms and methodologies • Data Assimilation: fusing data with models • Multi-source classification and information extraction • Integration of satellite, airborne and terrestrial sensor systems • Fusing temporal data sets for change detection studies (e.g. for Land Cover/Land Use Change studies) • Image and data mining from multi-platform, multi-source, multi-scale, multi-temporal data sets (e.g. geometric information, topological information, statistical information, etc.).
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