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An improved image non-blind image deblurring method based on FoEs

机译:基于敌人的改进图像非盲图像去孔法

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Traditional non-blind image deblurring algorithms always use maximum a posterior(MAP). MAP estimates involving natural image priors can reduce the ripples effectively in contrast to maximum likelihood(ML). However, they have been found lacking in terms of restoration performance. Based on this issue, we utilize MAP with KL penalty to replace traditional MAP. We develop an image reconstruction algorithm that minimizes the KL divergence between the reference distribution and the prior distribution. The approximate KL penalty can restrain over-smooth caused by MAP. We use three groups of images and Harris corner detection to prove our method. The experimental results show that our algorithm of non-blind image restoration can effectively reduce the ringing effect and exhibit the state-of-the-art deblurring results.
机译:传统的非盲图像去孔算法总是使用最大后(地图)。涉及自然图像前沿的地图估计可以与最大可能性(mL)相比有效地减少涟漪。但是,他们已经发现缺乏恢复性能。基于此问题,我们利用MAP与KL罚款替代传统地图。我们开发了一种图像重建算法,可最大限度地减少参考分布与先前分布之间的KL发散。近似KL惩罚可以抑制由地图的过度平滑。我们使用三组图像和哈里斯角检测来证明我们的方法。实验结果表明,我们的非盲图像恢复算法可以有效地降低振铃效果并表现出最先进的去掩盖结果。

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