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Research on digital online inspection of product quality in tobacco production enterprises

Author

Listed:
  • Feng Chen
  • Minye Liao
  • Chunning Deng
  • Ling Su

Abstract

Nowadays, many cigarette appearance quality problems in tobacco production enterprises lead to the frequent occurrence of unqualified cigarette products, and at present, there is a lack of automatic detection methods for cigarette appearance quality. In order to solve this problem, the deep convolution network model is applied to the automatic cigarette appearance quality detection system. First, the optimal parameters of the deep convolution network model are determined, and the optimal parameters of the model are: learning rate 0.01, maximum pooling function and relu activation function. The quality detection system is applied to the actual detection, and the results show that the accuracy rate of the automatic detection system of the deep convolution network model is 98.54%, and the false detection rate is 2.5%, which are better than the traditional manual sampling method. The above results show that the deep convolution network model does have high accuracy for automatic detection of cigarette appearance, and provides a new research idea for online detection of tobacco product appearance quality.

Suggested Citation

  • Feng Chen & Minye Liao & Chunning Deng & Ling Su, 2024. "Research on digital online inspection of product quality in tobacco production enterprises," International Journal of Innovation and Sustainable Development, Inderscience Enterprises Ltd, vol. 18(5/6), pages 629-647.
  • Handle: RePEc:ids:ijisde:v:18:y:2024:i:5/6:p:629-647
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