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하이브리드 신경회로망을 이용한 디지털 단층 영상의 BGA 검사
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  • 하이브리드 신경회로망을 이용한 디지털 단층 영상의 BGA 검사
  • Hybrid Neural Network Based BGA Solder Joint Inspection Using Digital Tomosynthesis
저자명
고국원,조형석,김종형,김형철,Ko. Kuk-Won,Cho. Hyung-Suck,Kim. Jong-Hyeong,Kim. Hyung-Cheol
간행물명
제어·자동화·시스템공학 논문지
권/호정보
2001년|7권 3호|pp.246-254 (9 pages)
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이 논문은 한국과학기술정보연구원과 논문 연계를 통해 무료로 제공되는 원문입니다.
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기타언어초록

In this paper, we described an approach to the automation of visual inspection of BGA solder joint defects of surface mounted components on printed circuit board by using neural network. Inherently, the BGA solder joints are located underneath its own package body, and this induces a difficulty of taking good image of the solder joints by using conventional imaging systems. To acquire the cross-sectional image of BGA sol-der joint, X-ray cross-sectional imaging method such as laminography and digital tomosynthesis has been cur-rently utilized. However, the cross-sectional image obtained by using laminography or DT methods, has inher-ent blurring effect and artifact. This problem has been a major obstacle to extract suitable features for classifi-cation. To solve this problem, a neural network based classification method is proposed int his paper. The per-formance of the proposed approach is tested on numerous samples of printed circuit boards and compared with that of human inspector. Experimental results reveal that the method provides satisfactory perform-ance and practical usefulness in BGA solder joint inspection.