Detection and discrimination of cotton foreign matter using push-broom based hyperspectral imaging: system design and capability.

Cotton quality, a major factor determining both cotton profitability and marketability, is affected by not only the overall quantity of but also the type of the foreign matter. Although current commercial instruments can measure the overall amount of the foreign matter, no instrument can differentia...

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Main Authors: Yu Jiang, Changying Li
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2015-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4368643?pdf=render
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spelling doaj-b021f83dfc3b489a8f069377a39b86332020-11-24T21:12:39ZengPublic Library of Science (PLoS)PLoS ONE1932-62032015-01-01103e012196910.1371/journal.pone.0121969Detection and discrimination of cotton foreign matter using push-broom based hyperspectral imaging: system design and capability.Yu JiangChangying LiCotton quality, a major factor determining both cotton profitability and marketability, is affected by not only the overall quantity of but also the type of the foreign matter. Although current commercial instruments can measure the overall amount of the foreign matter, no instrument can differentiate various types of foreign matter. The goal of this study was to develop a hyperspectral imaging system to discriminate major types of foreign matter in cotton lint. A push-broom based hyperspectral imaging system with a custom-built multi-thread software was developed to acquire hyperspectral images of cotton fiber with 15 types of foreign matter commonly found in the U.S. cotton lint. A total of 450 (30 replicates for each foreign matter) foreign matter samples were cut into 1 by 1 cm2 pieces and imaged on the lint surface using reflectance mode in the spectral range from 400-1000 nm. The mean spectra of the foreign matter and lint were extracted from the user-defined region-of-interests in the hyperspectral images. The principal component analysis was performed on the mean spectra to reduce the feature dimension from the original 256 bands to the top 3 principal components. The score plots of the 3 principal components were used to examine clusterization patterns for classifying the foreign matter. These patterns were further validated by statistical tests. The experimental results showed that the mean spectra of all 15 types of cotton foreign matter were different from that of the lint. Nine types of cotton foreign matter formed distinct clusters in the score plots. Additionally, all of them were significantly different from each other at the significance level of 0.05 except brown leaf and bract. The developed hyperspectral imaging system is effective to detect and classify cotton foreign matter on the lint surface and has the potential to be implemented in commercial cotton classing offices.http://europepmc.org/articles/PMC4368643?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Yu Jiang
Changying Li
spellingShingle Yu Jiang
Changying Li
Detection and discrimination of cotton foreign matter using push-broom based hyperspectral imaging: system design and capability.
PLoS ONE
author_facet Yu Jiang
Changying Li
author_sort Yu Jiang
title Detection and discrimination of cotton foreign matter using push-broom based hyperspectral imaging: system design and capability.
title_short Detection and discrimination of cotton foreign matter using push-broom based hyperspectral imaging: system design and capability.
title_full Detection and discrimination of cotton foreign matter using push-broom based hyperspectral imaging: system design and capability.
title_fullStr Detection and discrimination of cotton foreign matter using push-broom based hyperspectral imaging: system design and capability.
title_full_unstemmed Detection and discrimination of cotton foreign matter using push-broom based hyperspectral imaging: system design and capability.
title_sort detection and discrimination of cotton foreign matter using push-broom based hyperspectral imaging: system design and capability.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2015-01-01
description Cotton quality, a major factor determining both cotton profitability and marketability, is affected by not only the overall quantity of but also the type of the foreign matter. Although current commercial instruments can measure the overall amount of the foreign matter, no instrument can differentiate various types of foreign matter. The goal of this study was to develop a hyperspectral imaging system to discriminate major types of foreign matter in cotton lint. A push-broom based hyperspectral imaging system with a custom-built multi-thread software was developed to acquire hyperspectral images of cotton fiber with 15 types of foreign matter commonly found in the U.S. cotton lint. A total of 450 (30 replicates for each foreign matter) foreign matter samples were cut into 1 by 1 cm2 pieces and imaged on the lint surface using reflectance mode in the spectral range from 400-1000 nm. The mean spectra of the foreign matter and lint were extracted from the user-defined region-of-interests in the hyperspectral images. The principal component analysis was performed on the mean spectra to reduce the feature dimension from the original 256 bands to the top 3 principal components. The score plots of the 3 principal components were used to examine clusterization patterns for classifying the foreign matter. These patterns were further validated by statistical tests. The experimental results showed that the mean spectra of all 15 types of cotton foreign matter were different from that of the lint. Nine types of cotton foreign matter formed distinct clusters in the score plots. Additionally, all of them were significantly different from each other at the significance level of 0.05 except brown leaf and bract. The developed hyperspectral imaging system is effective to detect and classify cotton foreign matter on the lint surface and has the potential to be implemented in commercial cotton classing offices.
url http://europepmc.org/articles/PMC4368643?pdf=render
work_keys_str_mv AT yujiang detectionanddiscriminationofcottonforeignmatterusingpushbroombasedhyperspectralimagingsystemdesignandcapability
AT changyingli detectionanddiscriminationofcottonforeignmatterusingpushbroombasedhyperspectralimagingsystemdesignandcapability
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