Resumo (PT):
Abstract (EN):
Segmentation of the liver in Computer Tomography (CT) images allows
the extraction of three-dimensional (3D) structure of the liver structure.
The adequate receptive field for the segmentation of such a big organ in
CT images, from the remaining neighboring organs was very successfully improved by the use of the state-of-the-art Convolutional Neural
Networks (CNN) algorithms, however, certain issue still arise and are
highly dependent of pre- or post- processing methods to refine the final
segmentations. Here, an Encoder-Decoder Dilated Poling Convolutional
Network (EDDP) is proposed, composed of an Encoder, a Dilation and
a Decoder modules. The introduction of a dilation module has produced
allowed the concatenation of feature maps with a richer contextual information. The hierarchical learning process of such feature maps, allows
the decoder module of the model to have an improved capacity to analyze
more internal pixel areas of the liver, with additional contextual information, given by different dilation convolutional layers. Experiments on
the MICCAI Lits challenge dataset are described achieving segmentations
with a mean Dice coefficient of 95.7%, using a total number 30 CT test
volumes.
Language:
English
Type (Professor's evaluation):
Scientific
No. of pages:
2