Chen Jijing, Ding Kaixuan, Pi Yihan, Zhang Shoujun, Li Jiao, Tian Zhen
College of Precision Instrument and Optoelectronics Engineering, Tianjin University, Tianjin 300072, China.
Tianjin Key Laboratory of Biomedical Detecting Techniques and Instruments, Tianjin University, Tianjin 300072, China.
Photoacoustics. 2024 May 6;38:100614. doi: 10.1016/j.pacs.2024.100614. eCollection 2024 Aug.
Microscopic defects in flip chips, originating from manufacturing, significantly affect performance and longevity. Post-fabrication sampling methods ensure product functionality but lack in-line defect monitoring to enhance chip yield and lifespan in real-time. This study introduces a photoacoustic remote sensing (PARS) system for in-line imaging and defect recognition during flip-chip fabrication. We first propose a real-time PARS imaging method based on continuous acquisition combined with parallel processing image reconstruction to achieve real-time imaging during the scanning of flip-chip samples, reducing reconstruction time from an average of approximately 1134 ms to 38 ms. Subsequently, we propose improved YOLOv7 with space-to-depth block (IYOLOv7-SPD), an enhanced deep learning defect recognition method, for accurate in-line recognition and localization of microscopic defects during the PARS real-time imaging process. The experimental results validate the viability of the proposed system for enhancing the lifespan and yield of flip-chip products in chip manufacturing facilities.
倒装芯片中的微观缺陷源于制造过程,会显著影响其性能和寿命。制造后的抽样方法可确保产品功能,但缺乏在线缺陷监测,无法实时提高芯片良率和延长芯片寿命。本研究介绍了一种用于倒装芯片制造过程中在线成像和缺陷识别的光声遥感(PARS)系统。我们首先提出了一种基于连续采集并结合并行处理图像重建的实时PARS成像方法,以在倒装芯片样品扫描过程中实现实时成像,将重建时间从平均约1134毫秒减少到38毫秒。随后,我们提出了带有空间到深度模块的改进YOLOv7(IYOLOv7-SPD),这是一种增强的深度学习缺陷识别方法,用于在PARS实时成像过程中对微观缺陷进行准确的在线识别和定位。实验结果验证了所提出系统在芯片制造工厂提高倒装芯片产品寿命和良率的可行性。