Hyperspectral analysis for extraction of chemical characteristics in dehydrated bones

Gelatin, a valuable commodity in food processing, pharmaceuticals and photography, is produced by boiling the connective tissues, bones and skins of animals. To be able to predict the quality of the resulting gelatin, a number of parameters, such as percentage of fat, protein, water and mineral cont...

Full description

Bibliographic Details
Main Authors: Carolina Blanch-Perez-del-Notario, Andy Lambrechts
Format: Article
Language:English
Published: IM Publications Open 2017-09-01
Series:Journal of Spectral Imaging
Subjects:
Online Access:https://www.impopen.com/download.php?code=I06_a5
id doaj-11e106b9599941ce9ec9e9ccefc023b5
record_format Article
spelling doaj-11e106b9599941ce9ec9e9ccefc023b52020-11-24T22:15:43ZengIM Publications OpenJournal of Spectral Imaging2040-45652040-45652017-09-0161a510.1255/jsi.2017.a5Hyperspectral analysis for extraction of chemical characteristics in dehydrated bonesCarolina Blanch-Perez-del-Notario0Andy Lambrechts1Imec, Kapeldreef 75, 3001, Leuven, BelgiumImec, Kapeldreef 75, 3001, Leuven, BelgiumGelatin, a valuable commodity in food processing, pharmaceuticals and photography, is produced by boiling the connective tissues, bones and skins of animals. To be able to predict the quality of the resulting gelatin, a number of parameters, such as percentage of fat, protein, water and mineral content, are measured in the raw bones. We evaluate in this paper whether hyperspectral imaging can perform the required fast and accurate prediction of these parameters based on the spectral response of bone samples. This would allow replacing the time-consuming chemical analysis. The spectral response of nine different bone batches in the 600–1000 nm range (Vis-NIR) is correlated by means of Partial Least Square regression with the measured parameters. Our results show that high prediction accuracy can be obtained for all measured parameters based on the Vis-NIR spectral response. We can then conclude that hyperspectral imaging is a promising metric for the estimation of these chemical characteristics.https://www.impopen.com/download.php?code=I06_a5Vis-NIR spectral responsechemical characteristicsregression
collection DOAJ
language English
format Article
sources DOAJ
author Carolina Blanch-Perez-del-Notario
Andy Lambrechts
spellingShingle Carolina Blanch-Perez-del-Notario
Andy Lambrechts
Hyperspectral analysis for extraction of chemical characteristics in dehydrated bones
Journal of Spectral Imaging
Vis-NIR spectral response
chemical characteristics
regression
author_facet Carolina Blanch-Perez-del-Notario
Andy Lambrechts
author_sort Carolina Blanch-Perez-del-Notario
title Hyperspectral analysis for extraction of chemical characteristics in dehydrated bones
title_short Hyperspectral analysis for extraction of chemical characteristics in dehydrated bones
title_full Hyperspectral analysis for extraction of chemical characteristics in dehydrated bones
title_fullStr Hyperspectral analysis for extraction of chemical characteristics in dehydrated bones
title_full_unstemmed Hyperspectral analysis for extraction of chemical characteristics in dehydrated bones
title_sort hyperspectral analysis for extraction of chemical characteristics in dehydrated bones
publisher IM Publications Open
series Journal of Spectral Imaging
issn 2040-4565
2040-4565
publishDate 2017-09-01
description Gelatin, a valuable commodity in food processing, pharmaceuticals and photography, is produced by boiling the connective tissues, bones and skins of animals. To be able to predict the quality of the resulting gelatin, a number of parameters, such as percentage of fat, protein, water and mineral content, are measured in the raw bones. We evaluate in this paper whether hyperspectral imaging can perform the required fast and accurate prediction of these parameters based on the spectral response of bone samples. This would allow replacing the time-consuming chemical analysis. The spectral response of nine different bone batches in the 600–1000 nm range (Vis-NIR) is correlated by means of Partial Least Square regression with the measured parameters. Our results show that high prediction accuracy can be obtained for all measured parameters based on the Vis-NIR spectral response. We can then conclude that hyperspectral imaging is a promising metric for the estimation of these chemical characteristics.
topic Vis-NIR spectral response
chemical characteristics
regression
url https://www.impopen.com/download.php?code=I06_a5
work_keys_str_mv AT carolinablanchperezdelnotario hyperspectralanalysisforextractionofchemicalcharacteristicsindehydratedbones
AT andylambrechts hyperspectralanalysisforextractionofchemicalcharacteristicsindehydratedbones
_version_ 1725793618199838720