Repetitive Motion Estimation Network: Recover cardiac and respiratory signal from thoracic imaging

11/08/2018
by   Xiaoxiao Li, et al.
0

Tracking organ motion is important in image-guided interventions, but motion annotations are not always easily available. Thus, we propose Repetitive Motion Estimation Network (RMEN) to recover cardiac and respiratory signals. It learns the spatio-temporal repetition patterns, embedding high dimensional motion manifolds to 1D vectors with partial motion phase boundary annotations. Compared with the best alternative models, our proposed RMEN significantly decreased the QRS peaks detection offsets by 59.3 could handle the irregular cardiac and respiratory motion cases. Repetitive motion patterns learned by RMEN were visualized and indicated in the feature maps.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset