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首页> 外文期刊>Journal of instrumentation: an IOP and SISSA journal >Image reconstruction from undersampled confocal microscopy data using multiresolution based maximum entropy regularization
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Image reconstruction from undersampled confocal microscopy data using multiresolution based maximum entropy regularization

机译:基于多分辨率的最大熵正则化的UnderMaped共聚焦显微镜数据的图像重建

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We consider the problem of reconstructing 2D images from randomly under-sampled confocal microscopy samples. The well known and widely celebrated total variation regularization, which is the 1 norm of derivatives, turns out to be unsuitable for this problem; it is unable to handle both noise and under-sampling together. This issue is linked with the notion of phase transition phenomenon observed in compressive sensing research, which is essentially the break-down of total variation methods, when sampling density gets lower than certain threshold. The severity of this breakdown is determined by the so-called mutual incoherence between the derivative operators and measurement operator. In our problem, the mutual incoherence is low, and hence the total variation regularization gives serious artifacts in the presence of noise even when the sampling density is not very low. There has been very few attempts in developing regularization methods that perform better than total variation regularization for this problem. We develop a multi-resolution based regularization method that is adaptive to image structure. In our approach, the desired reconstruction is formulated as a series of coarse-to-fine multi-resolution reconstructions; for reconstruction at each level, the regularization is constructed to be adaptive to the image structure, where the information for adaption is obtained from the reconstruction obtained at coarser resolution level. This adaptation is achieved by using maximum entropy principle, where the required adaptive regularization is determined as the maximizer of entropy subject to the information extracted from the coarse reconstruction as constraints. We also utilize the directionally adaptive second order derivatives for constructing the regularization with directions guided by the given coarse reconstruction, which leads to an improved suppression of artifacts. We demonstrate the superiority of the proposed regularization method over existing ones usin
机译:我们考虑从随机欠采样的共聚焦显微镜样品重建2D图像的问题。众所周知的和广泛庆祝的总变化正规化,这是1个衍生物的规范,结果不适合这个问题;它无法处理噪声和欠抽样。该问题与在压缩传感研究中观察到的相变现象的概念相关联,这基本上是当采样密度低于某些阈值的总变化方法的分解。这种击穿的严重程度由衍生操作员和测量运算符之间的所谓的相互联系确定。在我们的问题中,相互间断的是低的,因此,即使采样密度不是很低,总变化正规化也会在噪声存在下给出严重的伪影。在开发正规化方法时,仍有很少的尝试,这些方法比这个问题的总变化正则化表现出更好。我们开发了一种基于多分辨率的正则化方法,该方法是自适应的图像结构。在我们的方法中,所需的重建被制定为一系列粗 - 细小的多分辨率重建;为了在每个级别重建,构造正则化以自适应地,其自适应地获得用于在较粗糙分辨率级别获得的重建。通过使用最大熵原理来实现这种适应,其中所需的自适应正规化被确定为熵的最大化器,该熵由从粗重建中提取的信息作为约束。我们还利用定向的自适应二阶衍生物来构造具有由给定的粗重建引导的方向的正则化,这导致了改善伪影的抑制。我们展示了在现有的USIN上提出的正规化方法的优势

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