TY - CONF N1 - cited By 8; Conference of 4th International Conference on Machine Vision: Computer Vision and Image Analysis; Pattern Recognition and Basic Technologies, ICMV 2011 ; Conference Date: 9 December 2011 Through 10 December 2011; Conference Code:88614 N2 - Detection and classification of defects on surface mount device printed circuit board (SMD-PCB) is an important requirement in electronic manufacturing process. This process which is primarily performed by automatic optical inspection (AOI) system ensures the functionality and quality of manufactured products. In this paper, the pattern recognition algorithms proposed in the literature for the inspection of defects using AOI are reviewed. The review focuses on segmentation algorithms, choice of features and feature extraction algorithms as well as the types of classifier and their relative classification performance. The review spans a 20 year period from 1990 to 2011. The results of the review suggest that solder joint defect is the type of defects mostly investigated and that the trend is moving towards combining the results of more than one classifier to improve classification accuracy and robustness. © 2012 Copyright Society of Photo-Optical Instrumentation Engineers (SPIE). ID - scholars3065 TI - A review of SMD-PCB defects and detection algorithms KW - AOI; Automatic optical inspection; Classification accuracy; Classification of defects; Classification performance; Detection algorithm; Electronic manufacturing; Feature extraction algorithms; Manufactured products; Pattern recognition algorithms; Segmentation algorithms; SMD-PCB; Solder-joint defects; Surface mount device KW - Algorithms; Classifiers; Computer vision; Feature extraction; Image analysis; Image segmentation; Optical testing; Organic pollutants; Polychlorinated biphenyls; Printed circuit boards KW - Defects CY - Singapore AV - none A1 - Mohd. Hani, A.F. A1 - Malik, A.S. A1 - Kamil, R. A1 - Thong, C.-M. UR - https://www.scopus.com/inward/record.uri?eid=2-s2.0-84857293372&doi=10.1117%2f12.920531&partnerID=40&md5=8e191f5c136ce145587612d3be54a5ab VL - 8350 Y1 - 2012/// SN - 0277786X ER -