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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Joint image deblurring and matching with feature-based sparse representation prior
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Joint image deblurring and matching with feature-based sparse representation prior

机译:联合图像去掩饰和基于特征的稀疏表示的匹配

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摘要

Image matching aims to find a similar area of the small image in the large image, which is one of the key steps in image fusion and vision-based navigation; however, most matching methods perform poorly when the images to be matched are blurred. Traditional approaches for blurred image matching usually follow a two-stage framework - first resorting to image deblurring and then performing image matching with the recovered image. However, the matching accuracy of these methods often suffers greatly from the deficiency of image deblurring. Recently, a joint image deblurring and matching method that utilizes the sparse representation prior to exploit the correlation between deblurring and matching was proposed to address this problem and found to obtain a higher matching accuracy. Yet, that technique is not efficient when the image is seriously blurred, and the method's time complexity is excessive. In this paper, we propose a joint image deblurring and matching approach with a feature-based sparse representation prior. Our approach utilizes two-directional two-dimensional (2D)(2) PCA to extract feature vectors from images and obtains a sparse representation prior in a robust feature space rather than the original pixel space, thus mitigating the influence of image blur. Moreover, the reduction in the feature dimension can also increase the computational efficiency. Extensive experiments show that our approach significantly outperforms state-of-the-art approaches in terms of both accuracy and speed. (C) 2020 Elsevier Ltd. All rights reserved.
机译:图像匹配旨在找到大图像中的小图像的类似区域,这是图像融合和基于视觉导航的关键步骤之一;然而,当要匹配的图像模糊时,大多数匹配方法都表现不佳。模糊图像匹配的传统方法通常遵循两级框架 - 首先诉诸图像去纹理,然后进行与恢复的图像进行图像匹配。然而,这些方法的匹配准确性往往从图像去纹的缺陷中受到大量影响。近来,提出了一种利用稀疏表示在利用去孔和匹配之间的相关性的关节图像去孔和匹配方法来解决这个问题,发现获得更高的匹配精度。然而,当图像严重模糊时,这种技术在图像严重模糊时,并且该方法的时间复杂程度过多。在本文中,我们提出了一种与基于特征的稀疏表示的联合图像去孔和匹配方法。我们的方法利用双向二维(2D)(2)PCA从图像中提取特征向量,并在鲁棒特征空间而不是原始像素空间中获得稀疏表示,从而减轻图像模糊的影响。此外,特征尺寸的减小也可以提高计算效率。广泛的实验表明,我们的方法在准确性和速度方面显着优于最先进的方法。 (c)2020 elestvier有限公司保留所有权利。

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