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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Subspace-Based Temperature and Emissivity Separation Algorithms in LWIR Hyperspectral Data
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Subspace-Based Temperature and Emissivity Separation Algorithms in LWIR Hyperspectral Data

机译:LWIR高光谱数据中基于子空间的温度和发射率分离算法

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In this paper, we investigate the temperature and emissivity separation (TES) problem from hyperspectral data acquired in the long-wave infrared region (LWIR) of the electromagnetic spectrum. We derive a general class of TES algorithms [subspace-based TES (SBTES)] relying on the assumption that the emissivity spectra of natural and man-made materials can be well represented in a given subspace of the original data space. Specifically, by exploiting the subspace representation and the Gaussian model for the noise affecting LWIR hyperspectral data, we approach TES under a statistical perspective by obtaining the maximum likelihood estimates of both the temperature and the spectral emissivity. The proposed approach originates several algorithms whose specific form depends on the particular basis matrix adopted to address the emissivity subspace. We study the performance of the presented class of algorithms and derive theoretical bounds on the accuracy of the temperature and emissivity estimators. Furthermore, by specifying two basis matrices for the emissivity subspace, we propose two different algorithms within the SBTES class. Finally, we present the results of an extensive experimental analysis carried out over simulated data to assess and compare the performance of the two presented algorithms.
机译:在本文中,我们从在电磁光谱的长波红外区域(LWIR)中获取的高光谱数据中研究了温度和发射率分离(TES)问题。我们基于一个假设,即可以在原始数据空间的给定子空间中很好地表示天然材料和人造材料的发射光谱,从而得出一般的TES算法类[基于子空间的TES(SBTES)]。具体来说,通过利用子空间表示法和高斯模型获得影响LWIR高光谱数据的噪声,我们在统计角度下通过获得温度和光谱发射率的最大似然估计来接近TES。所提出的方法源自几种算法,这些算法的具体形式取决于用于解决发射率子空间的特定基本矩阵。我们研究了所提出算法的性能,并推导了温度和发射率估算器精度的理论界限。此外,通过为发射率子空间指定两个基本矩阵,我们在SBTES类中提出了两种不同的算法。最后,我们介绍了对模拟数据进行的广泛实验分析的结果,以评估和比较这两种算法的性能。

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