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A smoothness constraint set based on local statistics of BDCT coefficients for image postprocessing

机译:基于局部BDCT系数统计量的平滑度约束集,用于图像后处理

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摘要

In blocking artifacts reduction based on the projection onto convex sets (POCS) technique, good constraint sets are very important. Until recently, smoothness constraint sets (SCS) are often formulated in the image domain, whereas quantization constraint set is defined in the block-based discrete cosine transform (BDCT) domain. Thus, frequent BDCT transform is inevitable in alternative projections. In this paper, based on signal and quantization noise statistics, we proposed a novel smoothness constraint set in the BDCT transform domain via the Wiener filtering concept. Experiments show that POCS using this smoothness constraint set not only has good convergence but also has better objective and subjective performance. Moreover, this set can be used as extra constraint set to improve most existing POCS-based image postprocessing methods.
机译:在基于凸集投影(POCS)技术的块减少伪影中,良好的约束集非常重要。直到最近,通常在图像域中制定平滑约束集(SCS),而在基于块的离散余弦变换(BDCT)域中定义量化约束集。因此,频繁的BDCT变换在替代投影中是不可避免的。在本文中,基于信号和量化噪声统计数据,我们通过维纳滤波概念在BDCT变换域中提出了一种新的平滑约束集。实验表明,使用该平滑约束集的POCS不仅具有良好的收敛性,而且具有较好的客观和主观性能。此外,该集合可以用作额外的约束集,以改善大多数现有的基于POCS的图像后处理方法。

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