Multi-organ detection in 3D fetal ultrasound with machine learning
3D ultrasound (US) is a promising technique to perform automatic extraction of standard planes for fetal anatomy assessment. This requires prior organ localization, which is difficult to obtain with direct learning approaches because of the high variability in fetus size and orientation in US volume...
Main Authors: | Raynaud, C, Ciofolo-Veit, C, Lefèvre, T, Ardon, R, Cavallaro, A, Salim, I, Papageorghiou, A, Rouet, L |
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Format: | Conference item |
Published: |
Springer
2017
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