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This paper introduces a new approach for the joint alignment of a large
collection of segmented images into the same system of coordinates while
estimating at the same time an optimal common coordinate system. The atlas
resulting from our group-wise alignment algorithm is obtained as the hidden
variable of an Expectation-Maximization (EM) estimation. This is achieved
by identifying the most consistent label across the collection of images at each
voxel in the common frame of coordinates.
In an...
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