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Directional Total Variation Based Image Deconvolution with Unknown Boundaries

机译:基于方向总变化的未知边界图像反卷积

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Like many other imaging inverse problems, image deconvolution suffers from ill-posedness and needs for an adequate regularization. Total variation (TV) is an effective regularizer; hence, frequently used in such problems. Various anisotropic alternatives to isotropic TV have also been proposed to capture different characteristics in the image. Directional total variation (DTV) is such an instance, which is convex, has the ability to capture the smooth boundaries as conventional TV does, and also handles the directional dominance by enforcing piecewice constancy through a direction. In this paper, we solve the deconvolution problem under DTV regularization, by using simple forward-backward splitting machinery. Besides, there are two bottlenecks of the deconvolution problem, that need to be addressed; one is the computational load revealed due to matrix inversions, second is the unknown boundary conditions (BCs). We tackle with the former one by switching to the frequency domain using fast Fourier transform (FFT), and the latter one by iteratively estimating a boundary zone to surrounder the blurred image by plugging a recently proposed framework into our algorithm. The proposed approach is evaluated in terms of the reconstruction quality and the speed. The results are compared to a very recent TV-based deconvolution algorithm, which uses a "partial" alternating direction method of multipliers (ADMM) as the optimization tool, by also plugging the same framework to cope with the unknown BCs.
机译:像许多其他成像逆问题一样,图像反卷积也遭受不适定性的困扰,需要进行适当的正则化处理。总变化量(TV)是有效的调节器;因此,经常用于此类问题。还提出了各向同性电视的各种各向异性替代品,以捕获图像中的不同特征。定向总变化量(DTV)就是这样的实例,它是凸的,具有捕获常规电视所能捕获的平滑边界的能力,并且还可以通过在一个方向上实现逐段恒定来处理定向优势。在本文中,我们通过使用简单的前向后拆分机制解决了DTV正则化下的反卷积问题。此外,还有反卷积问题的两个瓶颈,需要解决。一是由于矩阵求逆而显示的计算量,二是未知边界条件(BCs)。我们通过使用快速傅立叶变换(FFT)切换到频域来解决前一种问题,而通过将最近提出的框架插入我们的算法来迭代估计边界区域以包围模糊图像来解决前一种问题。所提出的方法是根据重建质量和速度进行评估的。将结果与最近的基于电视的反卷积算法进行比较,该算法使用“部分”交替方向乘数方法(ADMM)作为优化工具,同时还插入了相同的框架以应对未知的BC。

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