Cigarette box code recognition based on machine vision

Authors

  • Qifan Wen
  • Xiaofei Ji

DOI:

https://doi.org/10.54097/fcis.v1i2.1702

Keywords:

Machine Vision, Machine Learning, OCR, Image Processing

Abstract

This paper addresses this challenge by using machine vision to firstly collect cigarette box image data and process the images with grayscale and binarization, and then extract the characters to be trained by extracting the region of interest and doing threshold segmentation in turn. The SVM classifier was used to train the extracted characters, and finally the characters were recognized in turn, and the recognition effects of different classifiers were compared and analyzed, and it was concluded that the SVM classifier has the best effect and is suitable for enterprise production.

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References

Mori S , Suen C Y , Yamamoto K . Historical review of OCR research and development[J]. IEEE Computer Society Press, 1995. Zhenpei Li, Ping Li, Xinyu Guo. Three GDI+ based image grayscale implementation methods [J]. Computer Technology and Development, 2009, 19(7):4.

Sauvola J ,Pietik?Inen M.Adaptive document image binarization[J]. Pattern Recognition, 2000, 33(2):225-236.

Xin Qi. " Digital signal processing technology based on expansion corrosion algorithm." Automation Technology and Applications 10(2010):4.

Chang C C , Lin C J . LIBSVM: A library for support vector machines[J]. ACM Transactions on Intelligent Systems and Technology, 2007, 2(3, article 27).

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Published

25-09-2022

Issue

Section

Articles

How to Cite

Wen, Q., & Ji , X. (2022). Cigarette box code recognition based on machine vision. Frontiers in Computing and Intelligent Systems, 1(2), 38-40. https://doi.org/10.54097/fcis.v1i2.1702