Hyperspectral Image Classification Based on Mathematical Morphology and Tensor Decomposition

Mohamad Jouni, M. Mura, P. Comon
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引用次数: 11

Abstract

Abstract Hyperspectral Image (HSI) classification refers to classifying hyperspectral data into features, where labels are given to pixels sharing the same features, distinguishing the present materials of the scene from one another. Naturally a HSI acquires spectral features of pixels, but spatial features based on neighborhood information are also important, which results in the problem of spectral-spatial classification. There are various ways to account to spatial information, one of which is through Mathematical Morphology, which is explored in this work. A HSI is a third-order data block, and building new spatial diversities may increase this order. In many cases, since pixel-wise classification requires a matrix of pixels and features, HSI data are reshaped as matrices which causes high dimensionality and ignores the multi-modal structure of the features. This work deals with HSI classification by modeling the data as tensors of high order. More precisely, multi-modal hyperspectral data is built and dealt with using tensor Canonical Polyadic (CP) decomposition. Experiments on real HSI show the effectiveness of the CP decomposition as a candidate for classification thanks to its properties of representing the pixel data in a matrix compact form with a low dimensional feature space while maintaining the multi-modality of the data.
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基于数学形态学和张量分解的高光谱图像分类
高光谱图像(HSI)分类是指将高光谱数据分类为特征,对具有相同特征的像素进行标记,从而区分场景的当前材料。自然,HSI获取像素的光谱特征,但基于邻域信息的空间特征也很重要,这就导致了光谱-空间分类问题。有多种方法来解释空间信息,其中之一是通过数学形态学,这是在这项工作中探索。恒生指数是一个三阶数据块,建立新的空间多样性可能会增加这一阶。在许多情况下,由于逐像素分类需要像素和特征的矩阵,HSI数据被重塑为矩阵,这导致高维并忽略了特征的多模态结构。这项工作通过将数据建模为高阶张量来处理HSI分类。更精确地说,多模态高光谱数据的建立和处理使用张量正则多进(CP)分解。在真实HSI上的实验表明,CP分解作为分类的候选方法是有效的,因为它在保持数据多模态的同时,用低维特征空间以矩阵紧凑形式表示像素数据。
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