Qiulang JiJihong WangCaifu DingYuhang WangZhou WenZijie LiuChen Yang
Abstract In recent years, convolutional neural networks (CNN)‐based automatic segmentation of medical images has become one of the hot topics in clinical disease diagnosis. It is still a challenging task to improve the segmentation accuracy of the network model with the large variation of pathological regions in different patients and the fuzzy boundary of pathological regions. A Dual‐path Multi‐scale Attention Guided network (DMAGNet) for medical image segmentation is proposed in this paper. First, the Dual‐path Multi‐scale Attention Fusion Module (DMAF) is proposed as a novel skip connection strategy, which is applied to encode semantic dependencies between high‐level and low‐level channels. Second, the Multi‐scale Normalized Channel Attention Module (MNCA) based on the atrous convolution, normalization channel attention mechanism, and the Depthwise Separable Convolutions (DSConv) is developed to strengthen dependencies between channels. Finally, the encoder–decoder backbone employs the DSConv, as well as the pretrained Resnet34 block is combined in the encoder part to further improve the backbone network performance. Comprehensive experiments on brain, lung, and liver segmentation tasks show that the proposed DMAGNet outperforms the original U‐Net method and other advanced methods.
Zhen TianJing GaoShiwei LvXinyue AnYuxiao Zhang
Yiwei ShenJunchen GuoYan LiuChang XuQingwu LiFei Qi
Zhenghua XuBiao TianShijie LiuXiangtao WangDi YuanJunhua GuJunyang ChenThomas LukasiewiczVictor C. M. Leung
Cancan ZhuKe ChengXuecheng Hua
Pengcheng GuoXiangdong SuHaoran ZhangFeilong Bao