•  
  •  
 

Abstract

Objective: At present, mechanical screening method is widely used in cigarette capsules size separation, which has some problems, such as low size detection accuracy, unable to separate different color capsules, leakage capsules and so on. Aiming at the quality detection of cigarette capsules, a quality detection system of cigarette capsules is designed and constructed, which integrates the functions of feeding transmission, machine vision image processing and rejection of unqualified products. Methods: In the detection system, the improved inter class variance method was used to extract the single shot image, and the automatic detection of shot quality was realized by gray analysis, unlimited transformation and improved minimum circumscribed circle algorithm. After the automatic image inspection was completed, and it would be rejected by the designed rejecting mechanism for unqualified products. Results: Through repeated experiments and application analysis, the total false detection rate of diameter or shape or worn capsules of unqualified capsules was less than 3%. It was showed that the proposed method could accurately eliminate unqualified capsules, which verified the feasibility and reliability of the system. Conclusion: The design of online detection system for cigarette capsules based on machine vision can complete the automatic online detection of the quality of the capsules, improve the detection speed and accuracy, and have reference value for improving the competitiveness of the market of the explosive capsules.

Publication Date

11-28-2021

First Page

99

Last Page

104

DOI

10.13652/j.issn.1003-5788.2021.11.018

References

[1] 彭黔荣. 卷烟的爆珠[J]. 中国烟草学报, 2020, 26(2): 113.
[2] 顾健龙, 孟红明, 蔡洁云, 等. 卷烟爆珠质量检测研究进展[J]. 云南化工, 2020, 47(2): 1-4.
[3] 郭静, 罗华, 张涛. 机器视觉与应用[J]. 电子科技, 2014, 27(7): 185-188.
[4] 陈英. 机器视觉检测技术在工业检测中的应用[J]. 电子测试, 2015(18): 79-80.
[5] 徐龙泉, 王澍, 董浩, 等. 面向卷烟爆珠放行检验的气泡缺陷检测方法[J]. 烟草科技, 2020, 53(10): 96-102.
[6] 吴成刚, 杨尘, 谢崇泉, 等. 基于机器视觉的卷接机接装纸图像检测系统[J]. 食品与机械, 2020, 36(1): 150-156.
[7] CHANDAB Bhabatosh. Morphological algorithms for image processing[J]. IETE Technical Review, 2008, 25(1): 9-18.
[8] 谢一首, 李庆, 郑力新, 等. 基于机器视觉的胶囊缺陷检测系统设计[J]. 微型机与应用, 2016, 35(7): 69-72.
[9] OSTU Nobuyuki. A threshold selection method from gray-level histogram[J]. IEEE Trans, 1979, 9(1): 62-66.
[10] 张堃, 王震, 张培建, 等. 面向高速视觉检测的精确抓拍安全策略研究[J]. 仪器仪表学报, 2018, 39(2): 232-240.
[11] 杜云, 郑羽纶, 张效玮. 基于图像处理的苹果大小分级研究[J]. 河北工业科技, 2019, 36(6): 410-414.

Share

COinS
 
 

To view the content in your browser, please download Adobe Reader or, alternately,
you may Download the file to your hard drive.

NOTE: The latest versions of Adobe Reader do not support viewing PDF files within Firefox on Mac OS and if you are using a modern (Intel) Mac, there is no official plugin for viewing PDF files within the browser window.