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A Geometrical Approach to Multiresolution Management in the Fusion of Digital Images

机译:数字图像融合中的多分辨率管理的几何方法

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In most image fusion-based processes, image information are qualified by both numerical activities held by pixels or voxels (data domain) and spatial distribution of these values (spatial domain). Image data are often transformed (registration, multi-scale transform, etc.) early in the fusion process, thus losing a part of both their physical meaning and their numerical accuracy. We propose here a new image fusion scheme in which spatial information are managed apart from image activities, aiming at delaying the alteration of original data sets until the final aggregation/decision step of the process. The global idea is to independently model image information from the data and spatial domains, design fusion operators in both domains, and finally obtain the image aggregation model by combining these operators. Such a process makes it possible to introduce spatial coefficients resulting from spatial fusion into advanced aggregation models at the final step. The fusion in the spatial domain is based on discrete geometrical models of the images. It consists in applying a computational geometry algorithm stemming from the study of the classical digital coordinates changing problem, and modified to be efficient even on large 3D images. Two applications of the fusion process are proposed in the field of medical image analysis, for brain image synthesis and activity quantification, mainly destined to the automated diagnosis of Parkinsonian syndromes.
机译:在大多数基于图像融合的过程中,图像信息都通过像素或体素所拥有的数字活动(数据域)和这些值的空间分布(空间域)来限定。图像数据通常在融合过程的早期就进行了转换(配准,多尺度转换等),从而失去了部分物理意义和数值精度。我们在这里提出一种新的图像融合方案,其中除了图像活动外还管理空间信息,目的是将原始数据集的更改延迟到该过程的最终聚合/决定步骤。全球思想是从数据和空间域中独立地对图像信息进行建模,在这两个域中设计融合算子,最后通过组合这些算子来获得图像聚合模型。这样的过程使得在最后步骤将由空间融合产生的空间系数引入高级聚合模型成为可能。空间域中的融合基于图像的离散几何模型。它包括应用源自对经典数字坐标变化问题的研究的计算几何算法,并且经过修改后即使在大型3D图像上也能高效运行。融合过程在医学图像分析领域中被提出了两种应用,分别用于脑图像合成和活性定量,主要用于帕金森综合症的自动诊断。

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