基于改进深度学习的运动模糊图像快速增强研究

Han Ming, Liu Han
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引用次数: 0

摘要

为了解决当前视觉系统在成像过程中产生运动模糊的问题,提出了一种基于改进深度学习的运动模糊图像快速增强方法。通过检测运动模糊图像目标的轮廓,建立维纳滤波恢复模型,结合改进的深度学习方法分解灰度调函数,利用BNL-Means算法计算高频图像块之间的相似度,提高空间图像特征提取的精度。实现运动模糊图像的增强。通过与现有方法的比较,实验证明该设计方法的模糊核估计准确率达到95.63%,高于三种文献方法的比较。该方法对运动模糊图像的增强效果较好,具有较强的实用性。
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Research on Fast Enhancement of Motion Blurred Image Based on Improved Deep Learning
In order to solve the problem that the current vision system produces motion blur during imaging, a fast enhancement method for motion blur images based on improved deep learning is proposed. By detecting the contour of the motion blur image target, the Wiener filtering restoration model is established, combined with the improved deep learning method to decompose the gray tone function, and the BNL-Means algorithm is used to calculate the similarity between high-frequency image blocks to improve the accuracy of spatial image feature extraction. Realize the enhancement of motion blurred images. Compared with the existing methods, it is proved by experiments that the accuracy of the fuzzy kernel estimation of the design method reaches 95.63%, which is higher than the comparison of the three literature methods. The method has a better effect of enhancing the motion blur image and has strong practicability.
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