Improving the efficiency of steel plate surface defect classification by reducing the labelling cost using deep active learning

HIGHLIGHTS

  • What: These methods only utilize the model predictions on the unlabeled data, ignoring the uncertainty information of the model on the labeled data, which is considered useful. In this work, a deep active learning method for steel plate defect classification is proposed. The model is trained with DL; 11 DU is used to verify the performance of the model and VA` is calculated; 12 Until VA` > VA. The experiment is mainly carried out in two parts.
  • Who: Yang and colleagues from the Xiangtan University, School of Mechanical Engineering and Mechanics, China have published the research . . .

     

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