Research on SF-YOLONet metal gear end-face defect detection method based on evolutionary algorithm optimization
Shuai Yang,
Lin Zhou,
Chen Wang
et al.
Abstract:Some common problems, including the effect of non-detection regions on accuracy, the small size and multi-scale of defects,and the challenge of automatically optimizing neural network hyperparameters, are confronted during the metal gear end-face defect detection, lead to the inadequate performance of accuracy and efficiency, making them unsuitable for meeting the real-time online detection demands in industries. To address the problems above, this study proposes a method SF-YOLONet to detect defects on metal … Show more
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