计算机科学 ›› 2026, Vol. 53 ›› Issue (3): 277-286.doi: 10.11896/jsjkx.250200049
张伟1,2,3, 梁敦英1, 周婉婷1, 程祥1
ZHANG Wei1,2,3, LIANG Dunying1, ZHOU Wanting1, CHENG Xiang1
摘要: 针对皮肤病灶边缘模糊、毛发等噪声导致的分割病灶区域不完整、病灶特征分布差异较大等问题,基于U-Net提出一种结合浓缩注意力机制和残差空间特征变换的皮肤病灶分割算法CA-SFTNet。首先,在模型下采样过程中进行特征切分,保留皮肤病灶浅层语义信息。其次,在跳跃连接处引入浓缩注意力机制(Condensed Attention Neural Block),使得模型能够聚焦于病灶区域,提高分割精度。最后,在模型尾部加入残差空间特征变换层(Residual Spatial Feature Transformation Layer),增强对皮肤病变图像不同区域的自适应调整能力,提高模型对特征分布差异较大病灶的识别能力。实验在ISIC2017和ISIC2018数据集上进行,结果表明,CA-SFTNet在分割性能上优于传统U-Net,Dice系数分别达到93.12%和92.36%,比U-Net提升7.15个百分点和4.81个百分点;IoU值分别为82.59%和82.31%,比U-Net提升6.23个百分点和4.45个百分点。相比TransUNet和Swin-UNet等拓展算法,Dice系数提升2~6个百分点,IoU值提升1.8~4个百分点。这些结果证明了改进算法在皮肤病变区域分割上的优越性,其能够有效提高分割精度。
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