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Single Image Super-Resolution via Adaptive High-Dimensional Non-Local Total Variation and Adaptive Geometric Feature

机译:通过自适应高维非局部总变化量和自适应几何特征实现单图像超分辨率

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Single image super-resolution (SR) is very important in many computer vision systems. However, as a highly ill-posed problem, its performance mainly relies on the prior knowledge. Among these priors, the non-local total variation (NLTV) prior is very popular and has been thoroughly studied in recent years. Nevertheless, technical challenges remain. Because NLTV only exploits a fixed non-shifted target patch in the patch search process, a lack of similar patches is inevitable in some cases. Thus, the non-local similarity cannot be fully characterized, and the effectiveness of NLTV cannot be ensured. Based on the motivation that more accurate non-local similar patches can be found by using shifted target patches, a novel multishifted similar-patch search (MSPS) strategy is proposed. With this strategy, NLTV is extended as a newly proposed super-high-dimensional NLTV (SHNLTV) prior to fully exploit the underlying non-local similarity. However, as SHNLTV is very high-dimensional, applying it directly to SR is very difficult. To solve this problem, a novel statistics-based dimension reduction strategy is proposed and then applied to SHNLTV. Thus, SHNLTV becomes a more computationally effective prior that we call adaptive high-dimensional non-local total variation (AHNLTV). In AHNLTV, a novel joint weight strategy that fully exploits the potential of the MSPS-based non-local similarity is proposed. To further boost the performance of AHNLTV, the adaptive geometric duality (AGD) prior is also incorporated. Finally, an efficient split Bregman iteration-based algorithm is developed to solve the AHNLTV-AGD-driven minimization problem. Extensive experiments validate the proposed method achieves better results than many state-of-the-art SR methods in terms of both objective and subjective qualities.
机译:在许多计算机视觉系统中,单图像超分辨率(SR)非常重要。但是,作为一个病态严重的问题,其性能主要取决于先验知识。在这些先验中,非本地总变异(NLTV)先验非常受欢迎,并且近年来已进行了深入研究。然而,技术挑战仍然存在。由于NLTV在补丁搜索过程中仅利用固定的非移动目标补丁,因此在某些情况下不可避免地会缺少类似的补丁。因此,不能充分地表征非局部相似性,并且不能确保NLTV的有效性。基于通过使用移位目标补丁可以找到更准确的非局部相似补丁的动机,提出了一种新颖的多移位相似补丁搜索(MSPS)策略。通过这种策略,在充分利用潜在的非局部相似性之前,NLTV已扩展为新提出的超高维NLTV(SHNLTV)。但是,由于SHNLTV的尺寸很高,因此将其直接应用于SR非常困难。为了解决这个问题,提出了一种基于统计的降维策略,并将其应用于SHNLTV。因此,在我们将自适应高维非局部总变化量(AHNLTV)称为SHNLTV之前,其计算效率更高。在AHNLTV中,提出了一种新颖的联合权重策略,该策略充分利用了基于MSPS的非局部相似性的潜力。为了进一步提高AHNLTV的性能,还合并了自适应几何对偶(AGD)。最后,开发了一种有效的基于分裂Bregman迭代的算法来解决AHNLTV-AGD驱动的最小化问题。大量的实验证明,无论是在客观还是主观质量上,该方法都比许多最新的SR方法获得更好的结果。

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