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Multi-focus image fusion using a morphology-based focus measure in a quad-tree structure

机译:在四叉树结构中使用基于形态学的聚焦度量进行多聚焦图像融合

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Finite depth-of-field poses a problem in light optical imaging systems since the objects present outside the range of depth-of-field appear blurry in the recorded image. Effective depth-of-field of a sensor can be enhanced considerably without compromising the quality of the image by combining multi-focus images of a scene. This paper presents a block-based algorithm for multi-focus image fusion. In general, finding a suitable block-size is a problem in block-based methods. A large block is more likely to contain portions from both focused and defocused regions. This may lead to selection of considerable amount of defocused regions. On the other hand, small blocks do not vary much in relative contrast and hence difficult to choose from. Moreover, small blocks are more affected by mis-registration problems. In this work, we present a block-based algorithm which do not use a fixed block-size and rather makes use of a quad-tree structure to obtain an optimal subdivision of blocks. Though the algorithm starts with blocks, it ultimately identifies sharply focused regions in input images. The algorithm is simple, computationally efficient and gives good results. A new focus-measure called energy of morphologic gradients is introduced and is used in the algorithm. It is comparable with other focus measures viz.energy of gradients, variance, Tenengrad, energy of Laplacian and sum modified Laplacian. The algorithm is robust since it works with any of the above focus measures. It is also robust against pixel mis-registration. Performance of the algorithm has been evaluated by using two different quantitative measures.
机译:有限的景深在光光学成像系统中造成问题,因为存在于景深范围之外的物体在记录的图像中显得模糊。通过组合场景的多焦点图像,可以在不损害图像质量的情况下,大大提高传感器的有效景深。本文提出了一种基于块的多焦点图像融合算法。通常,在基于块的方法中找到合适的块大小是一个问题。大块更可能包含来自聚焦区域和散焦区域的部分。这可能导致选择大量的散焦区域。另一方面,小块的相对对比度变化不大,因此很难选择。此外,小块更容易受到配准问题的影响。在这项工作中,我们提出了一种基于块的算法,该算法不使用固定的块大小,而是利用四叉树结构来获得块的最佳细分。尽管该算法从块开始,但最终识别出输入图像中聚焦清晰的区域。该算法简单,计算效率高,并且给出了良好的结果。引入了一种新的聚焦度量,称为形态梯度能量,并在算法中使用。它可与其他焦点度量(即梯度能量,方差,Tenengrad,拉普拉斯算子的能量和修改的拉普拉斯算子的能量)相媲美。该算法具有鲁棒性,因为它可以与以上任何一种聚焦措施一起使用。它对于像素错误配准也很可靠。该算法的性能已通过使用两种不同的定量方法进行了评估。

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