190,930 research outputs found
Isointense infant brain MRI segmentation with a dilated convolutional neural network
Quantitative analysis of brain MRI at the age of 6 months is difficult
because of the limited contrast between white matter and gray matter. In this
study, we use a dilated triplanar convolutional neural network in combination
with a non-dilated 3D convolutional neural network for the segmentation of
white matter, gray matter and cerebrospinal fluid in infant brain MR images, as
provided by the MICCAI grand challenge on 6-month infant brain MRI
segmentation.Comment: MICCAI grand challenge on 6-month infant brain MRI segmentatio
Dilated Spatial Generative Adversarial Networks for Ergodic Image Generation
Generative models have recently received renewed attention as a result of
adversarial learning. Generative adversarial networks consist of samples
generation model and a discrimination model able to distinguish between genuine
and synthetic samples. In combination with convolutional (for the
discriminator) and de-convolutional (for the generator) layers, they are
particularly suitable for image generation, especially of natural scenes.
However, the presence of fully connected layers adds global dependencies in the
generated images. This may lead to high and global variations in the generated
sample for small local variations in the input noise. In this work we propose
to use architec-tures based on fully convolutional networks (including among
others dilated layers), architectures specifically designed to generate
globally ergodic images, that is images without global dependencies. Conducted
experiments reveal that these architectures are well suited for generating
natural textures such as geologic structures
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