Deconvolution is a widely used strategy to mitigate the blurring and noisy degradation of hyperspectral images~(HSI) generated by the acquisition devices. This issue is usually addressed by solving an ill-posed inverse problem. While investigating proper image priors can enhance the deconvolution performance, it is not trivial to handcraft a powerful regularizer and to set the regularization parameters. To address these issues, in this paper we introduce a tuning-free Plug-and-Play (PnP) algorithm for HSI deconvolution. Specifically, we use the alternating direction method of multipliers (ADMM) to decompose the optimization problem into two iterative sub-problems. A flexible blind 3D denoising network (B3DDN) is designed to learn deep priors and to solve the denoising sub-problem with different noise levels. A measure of 3D residual whiteness is then investigated to adjust the penalty parameters when solving the quadratic sub-problems, as well as a stopping criterion. Experimental results on both simulated and real-world data with ground-truth demonstrate the superiority of the proposed method.
翻译:进化是一种广泛使用的战略,用于减轻获取设备产生的超光谱图像~(HSI)的模糊和噪音降解。这个问题通常通过解决一个错误的反向问题来解决。在调查适当的图像前端可以提高分流性能的同时,手工制作一个强大的调节器和设置规范化参数并不是一件小事。为了解决这些问题,我们在本文件中为HSI分流引入了一个无调聚变算法(PnP)。具体地说,我们使用乘数交替方向法(ADMM)将优化问题分解成两个迭代子问题。一个灵活的盲人3D分解网络(B3DDN)旨在从深层前科中学习并用不同噪音水平解决分解分解子问题。然后调查3D残余白度的测量方法,以便在解决四面子问题时调整惩罚参数,以及一个停止的标准。模拟和真实世界数据的实验结果显示拟议方法的优越性。