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自适应盲图像去模糊与去噪

Adaptive blind image deblurring and denoising

Scandinavian Journal of Statistics · 2025
被引 0
ABS 3

中文导读

提出一种盲图像去模糊与去噪方法,允许模糊随位置变化,通过优化邻域大小检测模糊像素并利用清晰像素恢复图像,理论证明图像估计的一致性,模拟和真实数据表现优于现有方法。

Abstract

Abstract Blind image deblurring aims to reconstruct the original image from its blurred version without knowing the blurring mechanism. This is a challenging ill‐posed problem because there are infinitely many possible solutions. The ill‐posedness is further exacerbated if the blurring mechanism depends on the pixel location. In the literature, commonly used methods often assume that the blur is location invariant and estimate the blurring mechanism before restoring the image. In this article, we propose a blind image deblurring and denoising method that directly restores the image and allows the blur to change over locations. A major feature of the proposed method is that it detects blurry pixels using a neighborhood size that optimizes the detection power, and it removes the blur and noise by using as many sharp pixels as possible. Theoretically, we establish that our image estimate is consistent as the image resolution improves, an asymptotic property many existing deblurring methods lack. Numerically, we demonstrate our method's superior performance over state‐of‐the‐art methods in simulated experiments. Applications to real data also show that the proposed method works well.

图像处理盲去模糊去噪统计方法