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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Classification of hyperspectral images by tensor modeling and additive morphological decomposition
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Classification of hyperspectral images by tensor modeling and additive morphological decomposition

机译:张量建模和加法形态分解对高光谱图像进行分类

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摘要

Pixel-wise classification in high-dimensional multivariate images is investigated. The proposed method deals with the joint use of spectral and spatial information provided in hyperspectral images. Additive morphological decomposition(AMD)based on morphological operators is proposed. AMD defines a scale-space decomposition for multivariate images without any loss of information. AMD is modeled as a tensor structure and tensor principal components analysis is compared as dimensional reduction algorithm versus classic approach. Experimental comparison shows that the proposed algorithm can provide better performance for the pixel classification of hyperspectral image than many other well-known techniques.
机译:研究了高维多元图像中的按像素分类。所提出的方法处理高光谱图像中提供的光谱和空间信息的联合使用。提出了基于形态算子的可加形态分解(AMD)。 AMD为多元图像定义了比例空间分解,而不会丢失任何信息。将AMD建模为张量结构,将张量主成分分析作为降维算法与经典方法进行比较。实验比较表明,与许多其他众所周知的技术相比,该算法可以为高光谱图像的像素分类提供更好的性能。

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