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Regularization Parameter Estimation for Non-Negative Hyperspectral Image Deconvolution

机译:非负高光谱图像反卷积的正则化参数估计

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This paper aims at studying a method to automatically estimate the regularization parameters of non-negative hyperspectral image deconvolution methods. The deconvolution problem is formulated as a multi-objective optimization problem and the properties of the corresponding response surface are studied. Based on these properties, the minimum distance criterion (MDC) and the maximum curvature criterion (MCC) are proposed to estimate regularization parameters especially for the non-negativity constrained deconvolution problem. MDC has good theoretical properties (convexity and uniqueness) but requires to choose a reference point. On the contrary, MCC does not need to choose any reference point but does not have interesting theoretical properties. A grid-search-based approach to minimize the computational cost of MDC and MCC is proposed. It results in fast approaches to estimate the regularization parameters. Based on simulated 2D images, the proposed approaches are compared with the state-of-the-art methods, confirming the effectiveness of the MDC and MCC for the non-negativity constrained image deconvolution problem. In the case of non-negative hyperpsectral image deconvolution, the fast MDC yields better performances than the fast MCC. An application to real-world hyperspectral fluorescence microscopy images is also provided; it confirms the superiority of MDC.
机译:本文旨在研究一种自动估计非负高光谱图像反卷积方法正则化参数的方法。将反卷积问题表述为多目标优化问题,并研究相应响应表面的特性。基于这些性质,提出了最小距离准则(MDC)和最大曲率准则(MCC)来估计正则化参数,尤其是针对非负性约束反卷积问题。 MDC具有良好的理论特性(凸性和唯一性),但需要选择一个参考点。相反,MCC无需选择任何参考点,但没有有趣的理论特性。提出了一种基于网格搜索的方法来最小化MDC和MCC的计算成本。它导致快速的方法来估计正则化参数。基于模拟的2D图像,将所提出的方法与最新方法进行了比较,证实了MDC和MCC对于非负约束图像反卷积问题的有效性。在非负超投影图像反卷积的情况下,快速MDC比快速MCC产生更好的性能。还提供了在现实世界中的高光谱荧光显微图像的应用程序;它证实了MDC的优越性。

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