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首页> 外文期刊>Journal of the Indian Society of Remote Sensing >Spectral Tensor Synthesis Analysis for Hyperspectral Image Spectral-Spatial Feature Extraction
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Spectral Tensor Synthesis Analysis for Hyperspectral Image Spectral-Spatial Feature Extraction

机译:高光谱图像光谱空间特征提取的光谱张量合成分析

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摘要

Feature extraction is a preprocessing step for hyperspectral image classification. Principal component analysis only uses the spectral information, but it does not use spatial information of a hyperspectral image. Both spatial and spectral information are used when hyperspectral image is modelled as tensor, that is, decreasing the noise on spatial dimension and reducing the dimension on a spectral dimension at the same time. However, in this model, a hyperspectral image is modelled only as a data cube. The factors affecting the spectral features of ground objects is not considered and these factors are barely distinguished. This means that further improving classification is very difficult. Therefore, a new model on hyperspectral image is proposed by the authors. In the new model, many factors that impact the spectral features of ground objects are synthesized as the within-class factor. The within-class factor, the class factor and the pixel spectral are selected as a mode, respectively. The pixel spectrals in the training set are modelled as a third-order tensor. The experiment results indicate that the new method improves the classification compared with the previous methods.
机译:特征提取是用于高光谱图像分类的预处理步骤。主成分分析仅使用光谱信息,但它不使用超光图像的空间信息。当高光谱图像被建模时使用空间和光谱信息,即,即,在空间尺寸上降低噪声并同时在光谱维度上减小维度。然而,在该模型中,高光谱图像仅用为数据多维数据集。不考虑影响地面对象光谱特征的因素,并且几乎没有区分这些因素。这意味着进一步改善分类非常困难。因此,作者提出了一种关于高光谱图像的新模型。在新模型中,影响地面对象的光谱特征的许多因素被合成为课堂系数。分别选择类系数,类系数和像素光谱分别为模式。训练集中的像素频谱被建模为三阶张量。实验结果表明,与先前的方法相比,新方法改善了分类。

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