ISSN 1004-4140
    CN 11-3017/P

    基于SAM的PCB CT图像分割:研究进展和关键技术综述

    Semantic Segmentation of PCB CT Images Based on SAM: A Review of Research Progress and Key Technologies

    • 摘要: PCB是电子设备关键部件,其高精度无损检测对保证产品质量至关重要,其中导线、焊盘和过孔要素的精确识别尤为关键。深度学习虽已应用于PCB自动检测,但依赖大量标注数据导致成本高昂。尽管“无监督预训练+有监督微调”策略在一定范围内减少了对标注的依赖并提升了分割精度,其在真实开放场景中的泛化能力仍显不足。以SAM为代表的视觉大模型凭借强大通用分割能力及对标注需求的降低,为该领域提供了新思路。SAM的实时交互功能推动了“预训练+微调+人机协作”分割模式的发展,通过引入专家经验动态引导模型,有效提升了复杂环境下PCB图像分割的准确性与鲁棒性,促进了技术落地。然而,SAM直接用于PCB要素分割仍面临跨场景适应有限、部署困难、提示方式仍需优化等挑战。本文系统梳理了该领域进展,重点探讨面向SAM的微调策略、轻量化设计及结构优化等方面的创新成果,并对未来研究进行展望。

       

      Abstract: Printed circuit boards (PCBs) are critical components of electronic devices, making high-precision nondestructive testing essential for ensuring product quality. The accurate identification of key elements such as traces, pads, and vias is crucial. Although deep learning has been applied to the automatic inspection of PCBs, its reliance on large amounts of annotated data results in high costs. While strategies such as “unsupervised pre-training combined with supervised fine-tuning” have reduced dependency on annotations to some extent and improved segmentation accuracy, their generalization capability in real-world open scenarios remains insufficient. Vision foundation models such as the segment-anything model (SAM), with their powerful general segmentation ability and reduced demand for annotations, offer a new direction for this field. SAM's real-time interactive functionality has facilitated the development of a “pre-training + fine-tuning + human–machine collaboration” inspection paradigm. By incorporating expert knowledge to dynamically guide the model, this approach effectively enhances the accuracy and robustness of PCB image segmentation in complex environments, promoting technological implementation. However, directly applying SAM to PCB element segmentation still faces challenges such as limited cross-scenario adaptability, deployment difficulties, and the need to further optimize prompting methods. This paper systematically reviews recent progress in this field, focusing on innovations in SAM-oriented fine-tuning strategies, lightweight designs, and structural optimization. Future research directions are also discussed.

       

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