•  
  •  
 

Abstract

To meet the needs of screening and rejecting defective products in the production and processing of green beans, an automated online screening system was designed based on the machine vision technology. The combing mechanism in the hardware device of the system arranged the green bean products on the conveyor belt in an orderly manner, making it a waterfall-style single-row free-fall motion. In the process of falling, the upper computer controlled two linear arrays of CCDs installed in high and low positions to obtain single-sided images of each green bean from the front and rear directions. The software system could process the collected green bean images in real-time, extract the proportion of black pixels of green beans and analyze the circularity through algorithms, extract the color and shape features of green beans, and encode the positions of defective green beans. And then the detected information was sent to the lower single-chip microcomputer in real-time, and the single-chip microcomputer controlled the multi-channel high-pressure air nozzle to complete the removal action. Thereafter, the online screening and removal of defective green beans were realized. The experimental results showed that the detection efficiency of the system was high, and the detection accuracy could reach more than 98%, which could effectively meet the needs of automatic and intelligent production of green beans, showing great value of promotion and application.

Publication Date

3-28-2021

First Page

131

Last Page

136,167

DOI

10.13652/j.issn.1003-5788.2021.03.025

References

[1] 王奕. 基于机器视觉图像提取的马铃薯内部病虫害特征识别[J]. 食品与机械, 2019, 35(9): 151-155.
[2] 周航, 杜志龙, 武占元, 等. 机器视觉技术在现代农业装备领域的应用进展[J]. 中国农机化学报, 2017, 38(11): 86-92.
[3] 崔欣, 张鹏, 赵静, 等. 基于机器视觉的玉米种粒破损识别方法研究[J]. 农机化研究, 2019, 41(2): 28-33, 84.
[4] 吴杰. 基于机器视觉的圣女果分级分选机[D]. 银川: 宁夏大学, 2017: 57.
[5] 邓立苗, 韩仲志, 徐艳, 等. 基于机器视觉的马铃薯智能分级系统[J]. 食品与机械, 2014, 30(5): 144-146.
[6] 龚朝勇. 基于机器视觉裂颖稻种在线双面识别与剔除系统研究[D]. 杭州: 浙江大学, 2016: 87.
[7] PARK S B, JEONG D S. Design and implementation of serial communication for IoT sensing technology[J]. The Journal of the Convergence on Culture Technology, 2017, 3(3): 27-30.
[8] 唐曦文. 多线程在仪器控制软件设计中的研究与应用[J]. 航空精密制造技术, 2020, 56(4): 23-25, 32.
[9] 陈平, 李毅红. 基于线阵CCD的小物体掉落自动检测系统[J]. 制造业自动化, 2013, 35(4): 45-49.
[10] 王佳乐. 速冻青豆残次品机器视觉在线检测与剔除方法[D]. 天津: 天津科技大学, 2019: 72.
[11] LI Peng, HUANG Yong, YAO Kun-lun. Multi-algorithm fusion of RGB and HSV color spaces for image enhance-ment[C]// 第37届中国控制会议论文集. 北京: 中国自动化学会控制理论专业委员会, 2018: 6.
[12] 刘飞. 基于形态和颜色特征的小麦籽粒分类识别[D]. 郑州: 河南农业大学, 2018: 39.
[13] 殷蓉, 高珏, 孟国飞. 一种应用圆形度的番茄形状分级方法[J]. 常熟理工学院学报(自然科学), 2013, 27(4): 100-103.

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.