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On the decomposition of Mars hyperspectral data by ICA and Bayesian positive source separation

机译:基于ICA和贝叶斯正源分离的火星高光谱数据分解。

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The surface of Mars is currently being imaged with an unprecedented combination of spectral and spatial resolution. This high resolution, and its spectral range, gives the ability to pinpoint chemical species on the surface and the atmosphere of Mars more accurately than before. The subject of this paper is to present a method to extract informations on these chemicals from hyperspectral images. A first approach, based on independent component analysis (ICA) [P. Comon, Independent component analysis, a new concept? Signal Process. 36 (3) (1994) 287-314], is able to extract artifacts and locations of CO_2 and H_2O ices. However, the main independence assumption and some basic properties (like the positivity of images and spectra) being unverified, the reliability of all the independent components (ICs) is weak. For improving the component extraction and consequently the endmember classification, a combination of spatial ICA with spectral Bayesian positive source separation (BPSS) [S. Moussaoui, D. Brie, A. Mohammad-Djafari, C. Carteret, Separation of non-negative mixture of non-negative sources using a Bayesian approach and MCMC sampling, IEEE Trans. Signal Process. 54 (11) (2006) 4133-1145] is proposed. To reduce the computational burden, the basic idea is to use spatial ICA yielding a rough classification of pixels, which allows selection of small, but relevant, number of pixels. Then, BPSS is applied for the estimation of the source spectra using the spectral mixtures provided by this reduced set of pixels. Finally, the abundances of the components are assessed on the whole pixels of the images. Results of this approach are shown and evaluated by comparison with available reference spectra.
机译:目前,火星表面正以前所未有的光谱和空间分辨率组合成像。这种高分辨率及其光谱范围使人们能够比以前更精确地查明火星表面和大气中的化学物质。本文的主题是提出一种从高光谱图像中提取有关这些化学物质信息的方法。第一种方法,基于独立成分分析(ICA)[P。 Comon,独立组件分析,一个新概念?信号处理。例如,J.Mol.Chem.Soc.36(3)(1994)287-314],能够提取出CO_2和H_2O冰的伪影和位置。但是,主要的独立性假设和一些基本属性(如图像和光谱的正性)尚未得到验证,因此所有独立组件(IC)的可靠性均较弱。为了改善成分提取和最终成员分类,将空间ICA与光谱贝叶斯正源分离(BPSS)结合使用[S. Moussaoui,D。Brie,A。Mohammad-Djafari,C。Carteret,使用贝叶斯方法和MCMC采样分离非阴性源的非阴性混合物,IEEE Trans。信号处理。提出[J.Biol.Chem.54(11)(2006)4133-1145]。为了减少计算负担,基本思想是使用空间ICA产生像素的粗略分类,从而可以选择较小但相关的像素数。然后,使用由该减少的像素集提供的光谱混合将BPSS应用于源光谱的估计。最后,在图像的整个像素上评估分量的丰度。通过与可用参考光谱比较显示并评估了该方法的结果。

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