计算机科学 ›› 2026, Vol. 53 ›› Issue (4): 291-298.doi: 10.11896/jsjkx.250700057
张新峰1, 郭依海1, 刘晓民1, 许忠贺1, 李相生2
ZHANG Xinfeng1, GUO Yihai1, LIU Xiaomin1, XU Zhonghe1, LI Xiangsheng2
摘要: 针对脑白质高信号目标小的特点,提出一种结合局部、全局感知与语义流对齐的脑白质信号分割方法PGF-Net。首先,提出局部感知注意力模块(Patch Aware Attention,PAA),通过划分局部小图像块进行特征选择的方法,加强局部特征提取能力;然后,提出结合局部和全局感知的注意力模块(Patch Global Aware Attention,PGAA),利用Transformer全局感知的特点建立长程依赖;最后,提出门控语义流对齐模块(Gated Flow Alignment Module GFAM),在解码部分预测语义流偏移场,引导解码器中的高层特征扩张,实现与编码器对应低层特征的精准对齐融合。实验结果表明,PGF-Net在自采数据集中,交并比(mIoU)达到0.876 9,Dice系数为0.842 3,豪斯多夫距离(HD)降至32.61,平均表面距离(ASD)仅为1.7,达到了最优效果;在两种小目标公开数据集上也达到最优效果,验证了其泛化性和鲁棒性。此方法在辅助医生诊断方面具有一定的应用前景。
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