基于Pix2PixGAN的钨晶粒晶界提取方法
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1.四川大学电子信息学院 成都 610065; 2.成都西图科技有限公司 成都 610065

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TG132.3;TP391.4;TP18;TN04

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Tungsten grain boundary extraction method based on Pix2PixGAN
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1.School of Electronics and Information Engineering, Sichuan University,Chengdu 610065, China; 2.Chengdu Xitu Technology Co., Ltd.,Chengdu 610065, China

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    摘要:

    针对镧钨杆扫描电子显微镜图像分割中面临的晶粒粘连区分困难及晶界遮挡等挑战,提出了一种基于Pix2PixGAN框架的改进方法,用于实现钨晶粒晶界的准确提取。首先,使用边缘引导注意力EGA模块替换标准跳跃连接,结合拉普拉斯特征图提取,以增强多尺度晶界特征表达能力;其次,采用高效上采样块进行特征上采样,有效减轻了棋盘伪影并促进了不同层级特征的融合;将原始L2损失函数代替为加权二元交叉熵损失与加权交并比损失的组合损失,聚焦边缘像素优化;最后,引入梯度惩罚,增强生成器稳定性与多样性。实验结果显示,改进模型的F1值(F1-score)为72.47%,召回率(Recall)为77.21%,准确率(Precision)为68.32%,相较于基础Pix2PixGAN模型分别提高了13.02%、6.49%、16.87%,且在F1值与精确率上高于RCF、RINDNet、UCTransNet和MEGANet模型,验证了该模型在晶界提取的有效性。

    Abstract:

    To address the challenges encountered in segmenting scanning electron microscope images of lanthanum tungsten rods—such as difficulties in distinguishing adhered grains and occlusion of grain boundaries—an improved method based on the Pix2PixGAN framework is proposed to achieve high-precision extraction of tungsten grain boundaries. First, the standard skip connection is replaced with an edge guided attention module, integrated with Laplacian feature map extraction, to enhance the multi-scale representation of grain boundary features. Second, an efficient upsampling convolution block is introduced for feature upsampling, effectively mitigating checkerboard artifacts and facilitating the fusion of multi-level features. The original L2 loss function is substituted with a combined loss function comprising weighted binary cross-entropy loss and weighted intersection-over-union loss, emphasizing the optimization of edge pixels. Finally, gradient penalty is incorporated to improve the stability and diversity of the generator. Experimental results demonstrate that the improved model achieves an F1-score of 72.47%, a recall rate of 77.21%, and a precision of 68.32%, representing improvements of 13.02%, 6.49%, and 16.87%, respectively, over the baseline Pix2PixGAN model. Furthermore, the proposed method surpasses RCF, RINDNet, UCTransNet, and MEGANet in terms of F1-score and precision, confirming its effectiveness in grain boundary extraction.

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文金瑞,吴晓红,滕奇志,何海波.基于Pix2PixGAN的钨晶粒晶界提取方法[J].电子测量技术,2026,49(5):198-208

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  • 在线发布日期: 2026-05-08
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