Convolutional neural network with coarse-to-fine resolution fusion and residual learning structures for cross-modality image synthesis
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Jinhua Yu | Zhifeng Shi | Yuanyuan Wang | Ying Mao | Zhaoyu Hu | Guoqing Wu | Xi Chen | Dachuan Zhang
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