Automatic inspection of metallic surface defects using genetic algorithms

@inproceedings{Zheng2002AutomaticIO,
  title={Automatic inspection of metallic surface defects using genetic algorithms},
  author={Hong Zheng and Lingxue Kong and Saeid Nahavandi},
  year={2002}
}
This paper is concerned with the problem of automatic inspection of metallic surface using machine vision. An experimental system has been developed to take images of external metallic surfaces and an intelligent approach based on morphology and genetic algorithms is proposed to detect structural defects on bumpy metallic surfaces. The approach employs genetic algorithms to automatically learn morphology processing parameters such as structuring elements and defect segmentation threshold. This… CONTINUE READING

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