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    基于拓扑先验和双分支视觉Mamba的皮肤病变分割

    Skin Lesion Segmentation Based on Topological Prior and Dual-Branch Vision Mamba

    • 摘要: 皮肤病变分割对于皮肤癌的定量分析与早期诊断具有重要意义。然而,由于病灶边界模糊、对比度低及伪影干扰等因素,自动分割任务仍面临较大挑战。尽管Mamba架构的视觉状态空间模型凭借线性复杂度和对长距离依赖的建模能力,在效率与性能上相较Transformer展现出明显优势,但在保持分割结果拓扑结构完整性方面仍存在不足。为缓解上述问题,提出拓扑先验引导的双分支视觉Mamba网络(TDBVM). 该网络采用双编码器架构,分别提取拓扑结构先验与深度语义特征。其中拓扑分支引入多颜色空间拓扑组件提取模块,生成拓扑信息图. 通过多尺度融合机制,拓扑先验有效引导视觉特征学习,增强模型对复杂边界与病灶形态的感知能力,并有效抑制伪影干扰。在ISIC2018,ISIC2017,ISIC2016,PH2数据集上的实验结果表明,所提方法在分割精度与拓扑结构保持方面均显著优于现有先进方法,表现出较好的分割性能与良好的泛化能力。

       

      Abstract: Segmenting skin lesions from dermatoscopic images is crucial for the quantitative analysis and early diagnosis of skin cancer. However, automatic segmentation remains challenging due to blurred lesion boundaries, low contrast between lesions and surrounding skin, and the presence of artifacts, all of which complicate the segmentation process. Although the visual state space model based on the Mamba architecture demonstrates notable advantages over Transformer models in terms of linear computational complexity and long-range dependency modeling, it still struggles to preserve the topological integrity of segmentation results. To address this issue, a topological prior guided dual-branch vision Mamba network (TDBVM) is proposed. The proposed architecture adopts a dual-encoder design to extract topological priors and deep semantic features independently. In particular, the topology branch incorporates a multi-color space topological component extraction module to generate topological prior maps. These priors are fused with visual features through a multi-scale fusion mechanism, effectively guiding feature learning, enhancing the model’s ability to capture complex lesion boundaries and morphological variations, and suppressing artifacts. Experimental results on ISIC2018, ISIC2017, ISIC2016 and PH2 datasets demonstrate that the proposed method significantly outperforms existing state-of-the-art approaches in terms of both segmentation accuracy and topological structure preservation, showing better segmentation results and robust generalization capability.

       

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