Expand this Topic clickable element to expand a topic
Skip to content
Optica Publishing Group
  • Journal of Near Infrared Spectroscopy
  • Vol. 6,
  • Issue A,
  • pp. A111-A116
  • (1998)

Evaluating Techniques for Rice Grain Quality Using near Infrared Transmission Spectroscopy

Open Access Open Access

Abstract

The development of advanced evaluation techniques for rice quality has been a desire of the Japanese rice industry (breeding, distribution and processing). The objective of the present study is to develop novel techniques for evaluating rice grain quality. A reliable determination method for amylose in whole grain rice using near infrared transmission (NIT) is proposed, using Partial Least Squares (PLS) regression analysis. It was suggested from results based on two different validation methods that the PLS models have possibilities for determination of apparent amylose content using NIT spectroscopy. PLS modelling for constituents important in rice quality indicates that reasonably accurate models are attainable for moisture content and protein content in whole grain rice. However our PLS models were not sufficiently accurate for physical rice quality (head rice ratio, apparent density, whiteness) using NIT spectroscopy.

© 1998 NIR Publications

PDF Article
More Like This
Automatic estimation of rice grain number based on a convolutional neural network

Ruoling Deng, Long Qi, Weijie Pan, Zhiqi Wang, Dengbin Fu, and Xiuli Yang
J. Opt. Soc. Am. A 39(6) 1034-1044 (2022)

Rapid determination of the main components of corn based on near-infrared spectroscopy and a BiPLS-PCA-ELM model

Lili Xu, Jinming Liu, Chunqi Wang, Zhijiang Li, and Dongjie Zhang
Appl. Opt. 62(11) 2756-2765 (2023)

Evaluation of rice varieties using LIBS and FTIR techniques associated with PCA and machine learning algorithms

Matheus C. S. Ribeiro, Giorgio S. Senesi, Jader S. Cabral, CĂ­cero Cena, Bruno S. Marangoni, Charles Kiefer, and Gustavo Nicolodelli
Appl. Opt. 59(32) 10043-10048 (2020)

Cited By

Optica participates in Crossref's Cited-By Linking service. Citing articles from Optica Publishing Group journals and other participating publishers are listed here.


Select as filters


Select Topics Cancel
© Copyright 2024 | Optica Publishing Group. All rights reserved, including rights for text and data mining and training of artificial technologies or similar technologies.