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首页> 外文期刊>Procedia Computer Science >Hyperspectral Feature Extraction by Tensor Modeling and Intrinsic Decomposition
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Hyperspectral Feature Extraction by Tensor Modeling and Intrinsic Decomposition

机译:张量模拟和内在分解的高光谱特征提取

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摘要

Recently, hyperspectral tensor modeling has been assessed by its capacity of determining more compact as well as by its useful intrinsic data representation. In this paper, to enhance the hyperspectral tensor data representation and to eliminate non-relevant spatial datum, we integrated the intrinsic decomposition (ID) as a pre-processing step. The suggested approach acts in agreement with the joint use of spectral and spatial features provided in hyperspectral scenes, and it incorporates more usefully with the spatial data in the dimensional reduction step. The suggested framework consists of three steps: firstly, the intrinsic decomposition is employed to remove useless spatial data from hyperspectral image (HSI). Secondly, after modelling ID results as a tensor structure, the tensor principal component analysis is used to reduce tensorial data redundancy. Finally, we evaluated the proposed approach during classification tasks using real hyperspectral data sets. Compared to other methods, experiment results have proved that our approach can pave the way for the best classification accuracy.
机译:最近,已经通过其确定更紧凑以及其有用的内在数据表示来评估高光谱张量建模。在本文中,为了增强高光谱张量数据表示和消除非相关空间数据,我们将内在分解(ID)集成为预处理步骤。建议的方法与关节使用高光谱场景中提供的光谱和空间特征的联合使用,并且它更有用地利用尺寸减少步骤中的空间数据。建议的框架由三个步骤组成:首先,使用内在分解来从高光谱图像(HSI)中移除无用的空间数据。其次,在将ID建模结果中作为张量结构建模后,使用张量主成分分析来减少张力数据冗余。最后,我们在使用真实高光谱数据集的分类任务期间评估了所提出的方法。与其他方法相比,实验结果证明了我们的方法可以为最佳分类准确性铺平道路。

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