Title :
Improving X-ray inspection of printed circuit boards by integration of neural network classifiers
Author :
Neubauer, C. ; Hanke, R.
Author_Institution :
Fraunhofer Inst. for Integrated Circuits, Erlangen, Germany
Abstract :
For six sigma quality in printed circuit board (PCB)-production, X-ray inspection of solder joints is a powerful method to assure a high standard in fabrication. Neural network classifiers are able to adapt inspection tasks by presentation of typical training patterns. Neural networks are integrated into a X-ray inspection system both to increase defect recognition accuracy, as well as to minimize manual adjustments of the system. The experiments carried out on different surface mount technology (SMT) device types prove the capability of neural-network-based approaches to correctly segment objects (solder joints etc.), and to detect defects (solder voids etc.)
Keywords :
X-ray imaging; automatic test software; backpropagation; flaw detection; image classification; image segmentation; inspection; multilayer perceptrons; printed circuit manufacture; printed circuit testing; radiography; soldering; surface mount technology; voids (solid); X-ray inspection; defect recognition accuracy; multilayer perceptron; neural network classifiers; object segmentation; printed circuit boards; six sigma quality; solder joints; solder voids; surface mount technology; training patterns; Artificial neural networks; Automatic optical inspection; Image resolution; Neural networks; Optical computing; Pattern recognition; Printed circuits; Signal resolution; Soldering; Spatial resolution;
Conference_Titel :
Electronic Manufacturing Technology Symposium, 1993, Fifteenth IEEE/CHMT International
Conference_Location :
Santa Clara, CA
Print_ISBN :
0-7803-1424-7
DOI :
10.1109/IEMT.1993.398228