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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Exploring a unified low rank representation for multi-focus image
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Exploring a unified low rank representation for multi-focus image

机译:探索多重焦点图像的统一低级表示

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摘要

Recent years have witnessed a trend that uses image representation models, including sparse representation (SR), low-rank representation (LRR) and their variants for multi-focus image fusion. Despite the thrilling preliminary results, existing methods conduct the fusion patch by patch, leading to insufficient consideration of the spatial consistency among the image patches within a local region or an object. As a result, not only the spatial artifacts are easily introduced to the fused image but also the "jagged" artifacts frequently arise on the boundaries between the focused regions and the de-focused regions, which is an inherent problem in these patch-based fusion methods.Aiming to address the above problems, we propose, in this paper,a new multi-focus image fusion method integrating super-pixel clustering and a unified LRR (ULRR) model. The entire algorithm is carried out in three steps. In the first step, the source image is segmented into a few super-pixels with irregular sizes, rather than patches with regular sizes, to diminish the "jagged" artifacts and meanwhile to preserve the boundaries of objects on the fused image. Secondly, a super-pixel clustering-based fusion strategy is employed to further reduce the spatial artifacts in the fused images. This is achieved by using a proposed ULRR model, which imposes the low-rank constraints onto each super-pixel cluster.Thisis apparently more reasonable for those images with complicated scenes. Moreover, a Laplacianregularization term is incorporated in the proposed ULRR model to ensure the spatial consistency among the super-pixels with the same cluster. Finally, a measure of focus for each super-pixel is defined to seek the focused as well as de-focused regions in thesource image via jointly using representation coefficients and sparse errors derived from the proposed ULRR model. Extensive experiments have been conducted and the results demonstrate the superiorities of the proposed fusion method in diminishing the spatial artifactsin the fused image and the "jagged" boundary artifacts between the focused and de-focused regions, compared to the state-of-the-art fusion algorithms. (c) 2020 Elsevier Ltd. All rights reserved.
机译:近年来出现了一种使用图像表示模型的趋势,包括稀疏表示(SR)、低秩表示(LRR)及其变体来进行多聚焦图像融合。尽管有令人激动的初步结果,但现有的方法逐块进行融合,导致对局部区域或对象内的图像块之间的空间一致性考虑不足。因此,不仅空间伪影容易引入融合图像,而且聚焦区域和去聚焦区域之间的边界上经常出现“锯齿”伪影,这是这些基于面片的融合方法的固有问题。针对上述问题,本文提出了一种融合超像素聚类和统一LRR(ULRR)模型的多聚焦图像融合方法。整个算法分三步执行。在第一步中,源图像被分割成几个大小不规则的超级像素,而不是大小规则的面片,以减少“锯齿”伪影,同时保留融合图像上对象的边界。其次,采用基于超像素聚类的融合策略进一步减少融合图像中的空间伪影。这是通过使用建议的ULRR模型实现的,该模型对每个超级像素簇施加低秩约束。对于那些场景复杂的图像来说,这显然更合理。此外,在所提出的ULRR模型中加入了拉普拉斯正则化项,以确保具有相同聚类的超级像素之间的空间一致性。最后,定义每个超像素的聚焦度量,通过联合使用表示系数和从所提出的ULRR模型导出的稀疏误差,在源图像中寻找聚焦和去聚焦区域。进行了大量实验,结果表明,与最先进的融合算法相比,该融合方法在减少融合图像中的空间伪影以及聚焦和去聚焦区域之间的“锯齿”边界伪影方面具有优势。(c) 2020爱思唯尔有限公司版权所有。

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