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Parameter Estimation for Blind and Non-Blind Deblurring Using Residual Whiteness Measures

机译:使用残留白度测度进行盲和非盲去模糊的参数估计

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Image deblurring (ID) is an ill-posed problem typically addressed by using regularization, or prior knowledge, on the unknown image (and also on the blur operator, in the blind case). ID is often formulated as an optimization problem, where the objective function includes a data term encouraging the estimated image (and blur, in blind ID) to explain the observed data well (typically, the squared norm of a residual) plus a regularizer that penalizes solutions deemed undesirable. The performance of this approach depends critically (among other things) on the relative weight of the regularizer (the regularization parameter) and on the number of iterations of the algorithm used to address the optimization problem. In this paper, we propose new criteria for adjusting the regularization parameter and/or the number of iterations of ID algorithms. The rationale is that if the recovered image (and blur, in blind ID) is well estimated, the residual image is spectrally white; contrarily, a poorly deblurred image typically exhibits structured artifacts (e.g., ringing, oversmoothness), yielding residuals that are not spectrally white. The proposed criterion is particularly well suited to a recent blind ID algorithm that uses continuation, i.e., slowly decreases the regularization parameter along the iterations; in this case, choosing this parameter and deciding when to stop are one and the same thing. Our experiments show that the proposed whiteness-based criteria yield improvements in SNR, on average, only 0.15 dB below those obtained by (clairvoyantly) stopping the algorithm at the best SNR. We also illustrate the proposed criteria on non-blind ID, reporting results that are competitive with state-of-the-art criteria (such as Monte Carlo-based GSURE and projected SURE), which, however, are not applicable for blind ID.
机译:图像去模糊(ID)是一个不适定的问题,通常可以通过对未知图像(以及在盲目情况下对模糊算子)使用正则化或先验知识来解决。 ID通常被公式化为一个优化问题,其中目标函数包括一个数据项,该数据项鼓励估计的图像(并且在盲ID中模糊),以很好地解释所观察到的数据(通常是残差的平方范数),以及惩罚性的正则化器。解决方案被认为是不可取的。该方法的性能(主要取决于)正则化器的相对权重(正则化参数)以及用于解决优化问题的算法的迭代次数。在本文中,我们提出了用于调整正则化参数和/或ID算法迭代次数的新准则。基本原理是,如果正确估计了恢复的图像(盲ID中的模糊),则残留图像在光谱上为白色;反之,则为白色。相反,去模糊差的图像通常表现出结构化的伪像(例如,振铃,平滑度过高),从而产生不是光谱上为白色的残差。提出的标准特别适合于使用连续性的最新盲目ID算法,即沿着迭代缓慢降低正则化参数;在这种情况下,选择此参数并确定何时停止是一回事。我们的实验表明,基于白度的标准提出的SNR平均提高了仅0.15 dB,这比通过(透视)将算法停止在最佳SNR所获得的标准低了0.15 dB。我们还说明了有关非盲目ID的拟议标准,其报告结果与最新标准(例如,基于蒙特卡洛的GSURE和预计的SURE)具有竞争性,但不适用于盲目ID。

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