Toward Automated Quality Classification via Statistical Modeling of Grain Images for Rice Processing Monitoring

Computer vision-based rice quality inspection has recently attracted increasing interest in both academic and industrial communities because it is a low-cost tool for fast, non-contact, nondestructive, accurate and objective process monitoring. However, current computer-vision system is far from eff...

Full description

Bibliographic Details
Main Authors: Jinping Liu, Zhaohui Tang, Qing Chen, Pengfei Xu, Wenzhong Liu, Jianyong Zhu
Format: Article
Language:English
Published: Atlantis Press 2016-01-01
Series:International Journal of Computational Intelligence Systems
Subjects:
Online Access:https://www.atlantis-press.com/article/25868684/view
id doaj-379c15b2660c4205a32e67ec0539ae48
record_format Article
spelling doaj-379c15b2660c4205a32e67ec0539ae482020-11-25T02:36:54ZengAtlantis PressInternational Journal of Computational Intelligence Systems 1875-68832016-01-019110.1080/18756891.2016.1144158Toward Automated Quality Classification via Statistical Modeling of Grain Images for Rice Processing MonitoringJinping LiuZhaohui TangQing ChenPengfei XuWenzhong LiuJianyong ZhuComputer vision-based rice quality inspection has recently attracted increasing interest in both academic and industrial communities because it is a low-cost tool for fast, non-contact, nondestructive, accurate and objective process monitoring. However, current computer-vision system is far from effective in intelligent perception of complex grainy images, comprised of a large number of local homogeneous particles or fragmentations without obvious foreground and background. We introduce a well known statistical modeling theory of size distribution in comminution processes, sequential fragmentation theory, for the visual analysis of the spatial structure of the complex grainy images. A kind of omnidirectional multi-scale Gaussian derivative filter-based image statistical modeling method is presented to attain omnidirectional structural features of grain images under different observation scales. A modified LS-SVM classifier is subsequently established to automatically identify the processing rice quality. Extensive confirmative and comparative tests indicate the effectiveness and outperformance of the proposed method.https://www.atlantis-press.com/article/25868684/viewProcess monitoringSequential fragmentation theoryWeibull distributionLeast squares-support vector machine (LS-SVM)
collection DOAJ
language English
format Article
sources DOAJ
author Jinping Liu
Zhaohui Tang
Qing Chen
Pengfei Xu
Wenzhong Liu
Jianyong Zhu
spellingShingle Jinping Liu
Zhaohui Tang
Qing Chen
Pengfei Xu
Wenzhong Liu
Jianyong Zhu
Toward Automated Quality Classification via Statistical Modeling of Grain Images for Rice Processing Monitoring
International Journal of Computational Intelligence Systems
Process monitoring
Sequential fragmentation theory
Weibull distribution
Least squares-support vector machine (LS-SVM)
author_facet Jinping Liu
Zhaohui Tang
Qing Chen
Pengfei Xu
Wenzhong Liu
Jianyong Zhu
author_sort Jinping Liu
title Toward Automated Quality Classification via Statistical Modeling of Grain Images for Rice Processing Monitoring
title_short Toward Automated Quality Classification via Statistical Modeling of Grain Images for Rice Processing Monitoring
title_full Toward Automated Quality Classification via Statistical Modeling of Grain Images for Rice Processing Monitoring
title_fullStr Toward Automated Quality Classification via Statistical Modeling of Grain Images for Rice Processing Monitoring
title_full_unstemmed Toward Automated Quality Classification via Statistical Modeling of Grain Images for Rice Processing Monitoring
title_sort toward automated quality classification via statistical modeling of grain images for rice processing monitoring
publisher Atlantis Press
series International Journal of Computational Intelligence Systems
issn 1875-6883
publishDate 2016-01-01
description Computer vision-based rice quality inspection has recently attracted increasing interest in both academic and industrial communities because it is a low-cost tool for fast, non-contact, nondestructive, accurate and objective process monitoring. However, current computer-vision system is far from effective in intelligent perception of complex grainy images, comprised of a large number of local homogeneous particles or fragmentations without obvious foreground and background. We introduce a well known statistical modeling theory of size distribution in comminution processes, sequential fragmentation theory, for the visual analysis of the spatial structure of the complex grainy images. A kind of omnidirectional multi-scale Gaussian derivative filter-based image statistical modeling method is presented to attain omnidirectional structural features of grain images under different observation scales. A modified LS-SVM classifier is subsequently established to automatically identify the processing rice quality. Extensive confirmative and comparative tests indicate the effectiveness and outperformance of the proposed method.
topic Process monitoring
Sequential fragmentation theory
Weibull distribution
Least squares-support vector machine (LS-SVM)
url https://www.atlantis-press.com/article/25868684/view
work_keys_str_mv AT jinpingliu towardautomatedqualityclassificationviastatisticalmodelingofgrainimagesforriceprocessingmonitoring
AT zhaohuitang towardautomatedqualityclassificationviastatisticalmodelingofgrainimagesforriceprocessingmonitoring
AT qingchen towardautomatedqualityclassificationviastatisticalmodelingofgrainimagesforriceprocessingmonitoring
AT pengfeixu towardautomatedqualityclassificationviastatisticalmodelingofgrainimagesforriceprocessingmonitoring
AT wenzhongliu towardautomatedqualityclassificationviastatisticalmodelingofgrainimagesforriceprocessingmonitoring
AT jianyongzhu towardautomatedqualityclassificationviastatisticalmodelingofgrainimagesforriceprocessingmonitoring
_version_ 1724798068493123584