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Title:

Robust Segmentation of Various Anatomies in 3D Ultrasound Using Hough Forests and Learned Data Representations

Document type:
Zeitschriftenaufsatz
Author(s):
Milletari, F.; Ahmadi, A.; Kroll, C.; Hennersperger, C.; Tombari, F.; Shah, A.; Plate, A.; Bötzel, K.; Navab, N.
Abstract:
3D ultrasound segmentation is a challenging task due to image artefacts, low signal-to-noise ratio and lack of contrast at anatomical boundaries. Current solutions usually rely on complex, anatomy-specific regularization methods to improve segmentation accuracy. In this work, we propose a highly adaptive learning-based method for fully automatic segmentation of ultrasound volumes. During training, anatomy-specific features are obtained through a sparse auto-encoder. The extracted features are em...     »
Keywords:
CAMP,MICCAI,Seg,Ultrasound,MachineLearning,Learning,HoughForest,RandomForest,Midbrain,Prostate,Cardiac
Journal title:
Medical Image Computing and Computer Assisted Interventions - MICCAI 2015
Year:
2015
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