Hyperspectral Image Classification Using Tensor CP Decomposition

Mohamad Jouni, M. Mura, P. Comon
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引用次数: 12

Abstract

Image classification has been at the core of remote sensing applications. Optical remote sensing imaging systems naturally acquire images with spectral features corresponding to pixels. Spectral classification ignores the spatial distribution of the data which is becoming more relevant with the development of spatial resolution sensors, and many works aim to incorporate spatial features based on neighborhood through for example, Mathematical Morphology (MM). Additionally, one could stack multiple morphological transformations of the image resulting in a highly complex block of data. Since classification is a tool that requires a matrix of samples and features, and simply stacking the different sets of features can lead to the problem of high dimensionality, we propose a way to create a matrix of low dimensional feature space by modeling the data as tensors and thanks to Canonical Polyadic (CP) decomposition. Experiments on real image show the effectiveness of the proposed method.
基于张量CP分解的高光谱图像分类
图像分类一直是遥感应用的核心。光学遥感成像系统自然获取具有与像素相对应的光谱特征的图像。光谱分类忽略了数据的空间分布,而随着空间分辨率传感器的发展,数据的空间分布变得越来越重要,许多工作旨在通过数学形态学(MM)等方法结合基于邻域的空间特征。此外,可以叠加图像的多个形态变换,从而产生高度复杂的数据块。由于分类是一种需要样本和特征矩阵的工具,简单地堆叠不同的特征集可能会导致高维问题,因此我们提出了一种通过将数据建模为张量并借助规范Polyadic (CP)分解来创建低维特征空间矩阵的方法。在真实图像上的实验表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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