Towards Automated Semantic Segmentation in Prenatal Volumetric Ultrasound
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Xin Yang | Pheng-Ann Heng | Dong Ni | Lequan Yu | Jing Qin | Dandan Luo | Shengli Li | Cheng Bian | Huaxuan Wen | P. Heng | Dong Ni | Lequan Yu | J. Qin | Xin Yang | Shengli Li | Cheng Bian | D. Luo | H. Wen
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