Ge Xianyu, Tan Jieqing, Zhang Li
IEEE Trans Image Process. 2021;30:6970-6984. doi: 10.1109/TIP.2021.3101154. Epub 2021 Aug 6.
Blind image deblurring aims at recovering a clean image from the given blurry image without knowing the blur kernel. Recently proposed dark and extreme channel priors have shown their effectiveness in deblurring various blurry scenarios. However, these two priors fail to help the blur kernel estimation under the particular circumstance that clean images contain neither enough darkest nor brightest pixels. In this paper, we propose a novel and robust non-linear channel (NLC) prior for the blur kernel estimation to fill this gap. It is motivated by a simple idea that the blurring operation will increase the ratio of dark channel to bright channel. This change has been proved to be true both theoretically and empirically. Nonetheless, the presence of the NLC prior introduces a thorny optimization model. To handle it, an efficient algorithm based on projected alternating minimization (PAM) has been established which innovatively combines an approximate strategy, the half-quadratic splitting method, and fast iterative shrinkage-thresholding algorithm (FISTA). Extensive experimental results show that the proposed method achieves state-of-the-art results no matter when it has been applied in synthetic uniform and non-uniform benchmark datasets or in real blurry images.
盲图像去模糊旨在在不知道模糊核的情况下,从给定的模糊图像中恢复出清晰图像。最近提出的暗通道先验和极值通道先验在各种模糊场景的去模糊中已显示出其有效性。然而,在清晰图像既没有足够的最暗像素也没有足够的最亮像素这种特殊情况下,这两种先验方法无法帮助进行模糊核估计。在本文中,我们提出了一种用于模糊核估计的新颖且鲁棒的非线性通道(NLC)先验,以填补这一空白。它基于一个简单的想法,即模糊操作会增加暗通道与亮通道的比例。这一变化在理论和实证上都已被证明是正确的。尽管如此,NLC先验的存在引入了一个棘手的优化模型。为了处理它,我们建立了一种基于投影交替最小化(PAM)的高效算法,该算法创新性地结合了一种近似策略、半二次分裂方法和快速迭代收缩阈值算法(FISTA)。大量实验结果表明,无论将该方法应用于合成的均匀和非均匀基准数据集还是真实模糊图像,都能取得最优结果。