FAO AGRIS - International System for Agricultural Science and Technology

Use of hyperspectral imaging for the prediction of moisture content and chromaticity of raw and pretreated apple slices during convection drying

2018


Bibliographic information
Drying technology
Volume 36 Issue 7 Pagination 804 - 816 ISSN 1532-2300
Publisher
Elsevier Ltd
Other Subjects
Plsr: partial least square regression; Rmse: root mean square error; Secv: standard error of cross-validation; Hyperspectral; Cit: citric acid; W: water; F&v: fruit and vegetable; Mri: magnetic resonance imaging; Asc: ascorbic acid; Mc: moisture content; Dm: dry matter; Wavelengths; Hyperspectral imagery; Pretreatments; Hwb: hot water blanching; Vnir: visual to near infrared; Chromaticity; Least squares; K–m: kubelka–munk; Hsi: hyperspectral imaging
Language
English
Note
The authors wish to thank the Core Organic Plus Programme for the financial support within the SusOrganic project (project number BLE-2814OE006); the Newcastle Institute for Research on Sustainability for their support through the NIRES Responsive Mode Grant BH149667 and the University of Kassel for their financial support in the framework of the Nachwuchsgruppen programme.
Type
Journal Article; Text

2024-02-28
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