模糊内核优化与对比度水平和有效的补丁选择使用SURF功能

S. Yousaf, S. Qin
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引用次数: 3

摘要

单幅图像的盲去模糊是一个具有挑战性和众所周知的不适定问题。近年来,随着许多有效的模糊核估计算法的出现,对模糊核的细化和开发快速可靠的方法来利用有效的图像区域的研究变得越来越重要。通常使用多尺度框架进行模糊核改进以避免陷入局部极小值,但我们建议使用对比度不断提高的图像,从而逐步改善模糊核估计。为了提高核估计的效率,我们使用有效的补丁代替整个图像,不仅提高了恢复效率,而且通过丢弃无效区域改善了结果。它特别适合于被大气湍流、运动模糊或具有均匀背景的物体破坏的大型卫星图像。经过与其他方法的广泛分析和比较,提出了基于加速鲁棒特征(SURF)的补丁选择方法。此外,基于梯度方向的掩蔽在抑制误导区域方面也很有用。最后,提出并分析了一种结合有效区域和对比度水平的新方案。结果发现,使用基于SURF的补丁、梯度方向掩蔽和对比度水平图像可以显著改善结果。比较结果表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Blur kernel optimization with contrast levels and effectual patch selection using SURF features
Single image blind deblurring is a challenging and well known ill-posed problem. Recently, with the emergence of many effective algorithms to estimate blur kernels, the research for blur kernel refinement and for developing fast and reliable methods to utilize effectual image regions is becoming increasingly important. Generally, multiscale framework is used for blur kernel refinement to avoid trapping in local minima, however, we recommend to use images with increasing contrast levels which gradually improves blur kernel estimation. To make the kernel estimation more efficient, we used effectual patches instead of whole image, which not only make the restoration efficient but also improves the results by discarding the ineffectual regions. It is especially well suited for the large satellite images corrupted with atmospheric turbulence, motion blur or objects with uniform background. After extensive analysis and comparison with other methods, speed-up robust features (SURF) based patch selection method is proposed. In addition, masking based on gradient directions is also found useful in suppressing misleading regions. Finally, a new scheme is proposed and analyzed which combine the effectual regions as well as contrast levels. The results are found to be improved significantly using SURF based patches, gradient direction masking and contrast level images. The comparisons show the effectiveness of proposed approach.
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