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Detection of Flip-chip Bonding Error Through Edge Size Extraction of X-ray Image

X선 영상의 에지 추출을 통한 플립칩 솔더범프의 접합 형상 오차 검출

  • 송춘삼 (서울테크노파크 MSP센터) ;
  • 조성만 (서울산업대학교 나노생산기술연구소) ;
  • 김준현 (서울테크노파크 MSP센터) ;
  • 김주현 (국민대학교 기계자동차공학부) ;
  • 김민영 (경북대학교 전자전기컴퓨터학부) ;
  • 김종형 (서울산업대학교 기계설계자동화공학부)
  • Published : 2009.09.01

Abstract

The technology to inspect and measure an inner structure of micro parts has become an important tool in the semi-conductor industrial field with the development of automation and precision manufacturing. Especially, the inspection skill on the inside of highly integrated electronic device becomes a key role in detecting defects of a completely assembled product. X-ray inspection technology has been focused as a main method to inspect the inside structure. However, there has been insufficient research done on the customized inspection technology for the flip-chip assembly due to the interior connecting part of flip chip which connects the die and PCB electrically through balls positioned on the die. In this study, therefore, it is implemented to detect shape error of flip chip bonding without damaging chips using an x-ray inspection system. At this time, it is able to monitor the solder bump shape by introducing an edge-extracting algorithm (exponential approximation function) according to the attenuating characteristic and detect shape error compared with CAD data. Additionally, the bonding error of solder bumps is automatically detectable by acquiring numerical size information at the extracted solder bump edges.

Keywords

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