A recursive soft-decision PSF and neural network approach to adaptive blind image regularization

Kim-Hui Yap, L. Guan
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引用次数: 5

Abstract

We present a new approach to adaptive blind image regularization based on a neural network and soft-decision blur identification. We formulate blind image deconvolution into a recursive scheme by projecting and optimizing a novel cost function with respect to its image and blur subspaces. The new algorithm provides a continual blur adaptation towards the best-fit parametric structure throughout the restoration. It integrates the knowledge of real-life blur structures without compromising its flexibility in restoring images degraded by other nonstandard blurs. A nested neural network, called the hierarchical cluster model is employed to provide an adaptive, perception-based restoration. On the other hand, conjugate gradient optimization is adopted to identify the blur. Experimental results show that the new approach is effective in restoring the degraded image without the prior knowledge of the blur.
一种递归软判决PSF和神经网络自适应盲图像正则化方法
提出了一种基于神经网络和软决策模糊识别的自适应盲图像正则化方法。我们通过投影和优化关于其图像和模糊子空间的新成本函数,将盲图像反卷积形成递归方案。新算法在整个恢复过程中对最适合的参数结构提供连续的模糊适应。它集成了现实生活中的模糊结构的知识,而不损害其灵活性,恢复图像退化的其他非标准模糊。一个嵌套的神经网络,称为层次聚类模型被用来提供一个自适应的,基于感知的恢复。另一方面,采用共轭梯度优化来识别模糊。实验结果表明,该方法可以有效地恢复退化图像,而不需要先验的模糊知识。
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