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English(EN) TACoS: Weakly Supervised Learning of Two-Dimensional Materials from Scribble Annotations to Precise Segmentation

TACoS框架使用最小标注进行二维材料分割

研究人员开发了TACoS,一种使用弱监督学习进行二维材料分割的新框架。该方法通过将半监督一致性学习与结构化树能量约束相结合,大大减少了对广泛手动标注的需求。TACoS采用非对称区域对比学习来增强类内凝聚力和类间分离度,尤其是在具有挑战性的低对比度和复杂背景场景中。在石墨烯和二硫化钼数据集上的实验表明,TACoS在仅使用不到0.6%的标注数据的情况下,实现了超过96%的完全监督性能,为高通量筛选提供了高效的解决方案。 AI

影响 这项研究提供了一种更有效的材料分割方法,有望加速科学发现和工业应用。

排序理由 该集群包含一篇详细介绍新方法的学术论文。

在 arXiv cs.CV 阅读 →

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TACoS框架使用最小标注进行二维材料分割

报道来源 [2]

  1. arXiv cs.CV TIER_1 English(EN) · Jiabei Chen, Liping Zhang, Jiang-Bin Wu, Zhongming Wei, Enhao Ning, Su Yan, Weijun Li, Ping-Heng Tan, Xin Ning ·

    TACoS: Weakly Supervised Learning of Two-Dimensional Materials from Scribble Annotations to Precise Segmentation

    arXiv:2607.07169v1 Announce Type: new Abstract: The precise pixel-level localization of 2D material flakes is crucial for high-throughput screening. However, traditional fully supervised methods rely on dense annotations, which are costly and time-consuming, severely limiting the…

  2. arXiv cs.CV TIER_1 English(EN) · Xin Ning ·

    TACoS: Weakly Supervised Learning of Two-Dimensional Materials from Scribble Annotations to Precise Segmentation

    The precise pixel-level localization of 2D material flakes is crucial for high-throughput screening. However, traditional fully supervised methods rely on dense annotations, which are costly and time-consuming, severely limiting the practical deployment of segmentation models. Th…