Research on the Enhancement Algorithm of Defocused and Blurred Image Base on Non-local Constraints

Erhui Xi, Man Li
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引用次数: 0

Abstract

Due to the diversity of defocus blurred images, causing the unsatisfied effect of sharpness enhancement of the defocused and blurred image. On this basis, the paper has proposed an enhancement algorithm of defocused and blurred image base on non-local constraints. The estimated results similar to the original image was acquired, the actual defocus blur optical transfer function was calculated and the low inverter over-amplifying the noise was avoided through the improvement of inverse filtering by the Wiener filter. Based on the symmetry of a defocused and blurred circular, the diffusion curve of straight marginal function was filtered and restored to eliminate the noise in the image. On this basis, the non-local self-similarity and total variational regularity of the defocused and blurred image were complemented, and the sharpness of the defocused and blurred image was finally enhanced by using the non-local model to restore the marginal and detailed texture information of the defocused and blurred image. The results of the simulation have shown that the proposed method could not only increase the computational efficiency, but also obtain satisfactory sharpness enhancement of the defocused and blurred image, and a better retain effect of the marginal information.
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基于非局部约束的散焦模糊图像增强算法研究
由于散焦模糊图像的多样性,导致散焦模糊图像的锐度增强效果不理想。在此基础上,提出了一种基于非局部约束的散焦模糊图像增强算法。获得了与原始图像相似的估计结果,计算了实际离焦模糊光学传递函数,并通过维纳滤波器改进反滤波,避免了低逆变器对噪声的过放大。基于散焦模糊圆的对称性,对直线边缘函数的扩散曲线进行滤波和恢复,消除图像中的噪声。在此基础上,对离焦和模糊图像的非局部自相似性和总变分规律进行补充,最后利用非局部模型恢复离焦和模糊图像的边缘和细节纹理信息,增强离焦和模糊图像的清晰度。仿真结果表明,该方法不仅提高了计算效率,而且对散焦和模糊图像的锐度得到了满意的增强,对边缘信息有较好的保留效果。
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来源期刊
International Journal of Circuits, Systems and Signal Processing
International Journal of Circuits, Systems and Signal Processing Engineering-Electrical and Electronic Engineering
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