Corpus ID: 8384019

Machine Learning Technology Applied to Production Lines: Image Recognition System

@article{Tsuyoshi2017MachineLT,
  title={Machine Learning Technology Applied to Production Lines: Image Recognition System},
  author={Nagato Tsuyoshi and Shibuya Hiroki and Okamoto Hiroaki and Koezuka Tetsuo},
  journal={Fujitsu Scientific \& Technical Journal},
  year={2017},
  volume={53},
  pages={58}
}
The recent trend toward mass customization has increased the demand for multiproduct/multivolume production and driven a need for autonomous production systems that can respond quickly to changes on production lines. Production facilities using cameras and robot-based image recognition technologies must also be adaptable to changes in the image-capturing environment and product lots, so technology enabling the prompt generation and well-timed revision of image-processing programs is needed. The… Expand
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