先验概率
人工智能
反褶积
计算机科学
最大后验估计
图像(数学)
盲反褶积
图像复原
一般化
模式识别(心理学)
水准点(测量)
计算机视觉
像素
数学
图像处理
算法
最大似然
统计
贝叶斯概率
数学分析
大地测量学
地理
作者
Dong Huo,Abbas Masoumzadeh,Rafsanjany Kushol,Yee‐Hong Yang
标识
DOI:10.1109/tpami.2023.3283979
摘要
Conventional deconvolution methods utilize hand-crafted image priors to constrain the optimization. While deep-learning-based methods have simplified the optimization by end-to-end training, they fail to generalize well to blurs unseen in the training dataset. Thus, training image-specific models is important for higher generalization. Deep image prior (DIP) provides an approach to optimize the weights of a randomly initialized network with a single degraded image by maximum a posteriori (MAP), which shows that the architecture of a network can serve as the hand-crafted image prior. Unlike conventional hand-crafted image priors, which are obtained through statistical methods, finding a suitable network architecture is challenging due to the unclear relationship between images and their corresponding architectures. As a result, the network architecture cannot provide enough constraint for the latent sharp image. This paper proposes a new variational deep image prior (VDIP) for blind image deconvolution, which exploits additive hand-crafted image priors on latent sharp images and approximates a distribution for each pixel to avoid suboptimal solutions. Our mathematical analysis shows that the proposed method can better constrain the optimization. The experimental results further demonstrate that the generated images have better quality than that of the original DIP on benchmark datasets.
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