A Practical Method for Detecting Fluff Quality of Fabric Surface Using Optimal Sensing
The raising process has been widely used in manufacturing fabric productions. After raising the surface of the fabric, productions are covered with a fluff layer. The quality of the fabric surface is often valuated by the fluffing type. In order to objectively assess the fluff quality of the fabric...
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Kaunas University of Technology
2020-02-01
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Series: | Elektronika ir Elektrotechnika |
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doaj-16f83390cf2c45c18d3627ed17aa86372020-11-25T02:49:20ZengKaunas University of TechnologyElektronika ir Elektrotechnika1392-12152029-57312020-02-01261586210.5755/j01.eie.26.1.2422124221A Practical Method for Detecting Fluff Quality of Fabric Surface Using Optimal SensingShoufeng Jin0Qiangqiang Lin1Yu Bie2Qiurui Ma3Zhixiong Li4Department of Mechanical Engineering, Xi'an Polytechnic UniversityDepartment of Mechanical Engineering, Xi'an Polytechnic UniversitySchool of Chemical Engineering, Kunming University of Science and TechnologyCollege of Fashion and Art of Design, Xi'an Polytechnic UniversitySchool of Energy and Power Engineering, Wuhan University of TechnologyThe raising process has been widely used in manufacturing fabric productions. After raising the surface of the fabric, productions are covered with a fluff layer. The quality of the fabric surface is often valuated by the fluffing type. In order to objectively assess the fluff quality of the fabric surface, an optimal sensing method is proposed in this paper. The fluff contour image was firstly collected by the light-cut imaging device. Then, the fluff region was segmented by the adaptive image segmentation method, the contour coordinates of the fabric were extracted using the freeman chain code and constructed in the form of the binary image. Lastly, a back-propagation neural network (BPNN) was used to learn the relationship between the contour coordinates and the fluff quality. On this basis, a practical fabric fluff detection platform was developed based on the optimal sensing technique. Experimental tests were conducted to evaluate the performance of the proposed method in detecting the fluff quality with four different colours and different fluffing processes. Furthermore, the actual fabric inspection was carried out. The detection correct rate can reach 94.17 %, which can meet the practical production requirement.http://eejournal.ktu.lt/index.php/elt/article/view/24221fabric manufacturingmachine visionartificial intelligenceoptical imaging |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Shoufeng Jin Qiangqiang Lin Yu Bie Qiurui Ma Zhixiong Li |
spellingShingle |
Shoufeng Jin Qiangqiang Lin Yu Bie Qiurui Ma Zhixiong Li A Practical Method for Detecting Fluff Quality of Fabric Surface Using Optimal Sensing Elektronika ir Elektrotechnika fabric manufacturing machine vision artificial intelligence optical imaging |
author_facet |
Shoufeng Jin Qiangqiang Lin Yu Bie Qiurui Ma Zhixiong Li |
author_sort |
Shoufeng Jin |
title |
A Practical Method for Detecting Fluff Quality of Fabric Surface Using Optimal Sensing |
title_short |
A Practical Method for Detecting Fluff Quality of Fabric Surface Using Optimal Sensing |
title_full |
A Practical Method for Detecting Fluff Quality of Fabric Surface Using Optimal Sensing |
title_fullStr |
A Practical Method for Detecting Fluff Quality of Fabric Surface Using Optimal Sensing |
title_full_unstemmed |
A Practical Method for Detecting Fluff Quality of Fabric Surface Using Optimal Sensing |
title_sort |
practical method for detecting fluff quality of fabric surface using optimal sensing |
publisher |
Kaunas University of Technology |
series |
Elektronika ir Elektrotechnika |
issn |
1392-1215 2029-5731 |
publishDate |
2020-02-01 |
description |
The raising process has been widely used in manufacturing fabric productions. After raising the surface of the fabric, productions are covered with a fluff layer. The quality of the fabric surface is often valuated by the fluffing type. In order to objectively assess the fluff quality of the fabric surface, an optimal sensing method is proposed in this paper. The fluff contour image was firstly collected by the light-cut imaging device. Then, the fluff region was segmented by the adaptive image segmentation method, the contour coordinates of the fabric were extracted using the freeman chain code and constructed in the form of the binary image. Lastly, a back-propagation neural network (BPNN) was used to learn the relationship between the contour coordinates and the fluff quality. On this basis, a practical fabric fluff detection platform was developed based on the optimal sensing technique. Experimental tests were conducted to evaluate the performance of the proposed method in detecting the fluff quality with four different colours and different fluffing processes. Furthermore, the actual fabric inspection was carried out. The detection correct rate can reach 94.17 %, which can meet the practical production requirement. |
topic |
fabric manufacturing machine vision artificial intelligence optical imaging |
url |
http://eejournal.ktu.lt/index.php/elt/article/view/24221 |
work_keys_str_mv |
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