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暗通道约束和交替方向乘子法优化的湍流图像盲复原 被引量:6

Dark Channel Constraint and Alternated Direction Multiplier Optimization of Turbulence Degraded Image Blind Restoration
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摘要 为提高湍流退化图像的复原效果,针对盲复原算法在最大后验概率框架下,使用梯度分布先验信息约束容易求得模糊平凡解的问题,提出了一种暗通道约束和交替方向乘子法优化的湍流图像盲复原算法。基于多尺度的思想,在每一层尺度上,对图像施加暗通道先验约束,对点扩散函数施加非负性约束和能量约束。对采用坐标下降法交替迭代估计当前尺度下的模糊核和图像,当达到最大尺度时,得到最终估计的模糊核。结合总变分模型,采用交替方向乘子法优化实现图像细节快速恢复。实验结果表明,新算法使用的先验信息约束,有利于得到清晰解,在总变分模型下能收敛到全局最优解,可以有效抑制图像复原过程中产生的伪迹,恢复出更好的目标图像细节。 In order to improve the effect fuzzy solution is easy to be obtained by of turbulence degraded image restoration, using the prior information constraint of framework of maximum a posteriori probability of blind restoration algorithm, this aiming at the problem that the gradient distribution under the paper proposes a dark channel constraint and alternated direction multiplier optimization of turbulence degraded image blind restoration method. First, based on the idea of muhi-scale, a dark channel prior constraint is imposed on the image and non-negative constraints and energy constraints are imposed on the point spread function at each level.Then, the kernel and image of the current scale are estimated by alternating iterations of coordinate descent method. When the maximum scale is reached, the final estimated blur kernel is obtained. Last, combined with the total variational model, the image details are quickly restored using the alternate direction optimization method. The experimental results show can converge to the global optimal solution in the total variational model, which can effectively suppress the artifacts produced in the image restoration process and recover a better target image detail.
出处 《西北工业大学学报》 EI CAS CSCD 北大核心 2018年第1期103-109,共7页 Journal of Northwestern Polytechnical University
基金 航空科学基金(20131953022) 西北工业大学研究生创意创新种子基金资助
关键词 图像处理 湍流图像盲复原 暗通道约束 交替方向乘子法优化 反卷积 总变分 点扩散函数 image processing turbulence image blind restoration dark channel constraint alternated direction optimization methods deconvolution total variational point spread function
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