Printed circuit board (pcb) layout is becoming high density, high performance, light, and short. In the automatic pcb defect detection system, image registration of pcb plays an important role. However, most of the tr...
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Printed circuit board (pcb) layout is becoming high density, high performance, light, and short. In the automatic pcb defect detection system, image registration of pcb plays an important role. However, most of the traditional registration methods are inefficient, and cannot cope with the problems of image distortion, affine, noise, and so on. To address this issue, the authors propose an improved scale invariant feature transform (SIFT) feature extraction algorithm combined with particle swarm optimisation (PSO) to register the images of pcb which placed on a conveyor belt. The advantage of the presented approach is that the registration results are more robust and efficient by optimising the existing pcb image matching framework. The experimental results on the proposed pcb datasets show that the speed of the proposed method (improved SIFT-PSO) is faster than the traditional SIFT feature registration method, and the average computing time of processing single picture can be improved by 10 s, the registration accuracy can be improved by 3-4%. Compared with the experimental results of other algorithms, the root-mean-square error can be reduced to 0.5146 by using the proposed method. Thus, the proposed method (improved SIFT-PSO) is more accurate and robust in real-time inspection system of pcb.
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