Deep learning cigarette defect detection method based on saliency feature guidance
Xiaoming Wang,
Liyan Chen,
Lei Wu
et al.
Abstract:Cigarette defect detection is important in industrial production. Existing methods extract features for defect detection manually or using deep learning. However, due to the small size of cigarette defects, these methods are unable to effectively extract discriminative features, limiting detection performance. Hence, a deep learning‐based method called significant feature‐guided cigarette defect detection (SFGCD) is proposed, which combines saliency feature extraction methods with deep learning to enhance feat… Show more
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