dAUTOMAP: decomposing AUTOMAP to achieve scalability and enhance performance

Schlemper, Jo, Oksuz, Ilkay, Clough, James R., Duan, Jinming, King, Andrew P., Schnabel, Julia A., Hajnal, Joseph V., Rueckert, Daniel

arXiv.org Machine Learning 

AUTOMAP is a promising generalized reconstruction approach, however, it is not scalable and hence the practicality is limited. We present dAUTOMAP, a novel way for decomposing the domain transformation of AUTOMAP, making the model scale linearly. We show dAUTOMAP outperforms AUTOMAP with significantly fewer parameters.

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