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Coupled segmentation and denoising/deblurring models for hyperspectral material identification

机译:耦合的分割和去噪/去模糊模型用于高光谱材料识别

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摘要

A crucial aspect of spectral image analysis is the identification of the materials present in the object or scene being imaged and to quantify their abundance in the mixture. An increasingly useful approach to extracting such underlying structure is to employ image classification and object identification techniques to compressively represent the original data cubes by a set of spatially orthogonal bases and a set of spectral signatures. Owing to the increasing quantity of data usually encountered in hyperspectral data sets, effective data compressive representation is an important consideration, and noise and blur can present data analysis problems. In this paper, we develop image segmentation methods for hyperspectral space object material identification. We also couple the segmentation with a hyperspectral image data denoising/deblurring model and propose this method as an alternative to a tensor factorization methods proposed recently for space object material identification. The model provides the segmentation result and the restored image simultaneously. Numerical results show the effectiveness of our proposed combined model in hyperspectral material identification.
机译:光谱图像分析的关键方面是识别存在于要成像的对象或场景中的材料,并量化它们在混合物中的丰度。提取这种底层结构的一种越来越有用的方法是采用图像分类和对象识别技术,以通过一组空间正交基和一组光谱特征来压缩表示原始数据立方体。由于通常在高光谱数据集中遇到的数据量越来越大,有效的数据压缩表示是一个重要的考虑因素,而噪声和模糊会带来数据分析问题。在本文中,我们开发了用于高光谱空间物体材料识别的图像分割方法。我们还将分割与高光谱图像数据去噪/去模糊模型耦合,并提出此方法作为最近提出的用于空间物体材料识别的张量分解方法的替代方法。该模型同时提供分割结果和恢复的图像。数值结果表明,我们提出的组合模型在高光谱材料识别中的有效性。

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