Integrative Advances in Rice Research 2022
DOI: 10.5772/intechopen.99017
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Near-Infrared Spectroscopy and Machine Learning: Analysis and Classification Methods of Rice

Abstract: Nowadays, the conventional biochemical methods used to differentiate and characterize rice types, biochemical properties, authentication, and contamination issues are difficult to implement due to the high cost of reagents, time requirement and environmental issues. Actually, the success of agri-food technology is directly related to the quality of analysis of experimental data acquired by sensors or techniques such as the infrared-spectroscopy. To overcome these technical limitations, a rapid and non-destruct… Show more

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Cited by 5 publications
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“…The model which was best for hardness prediction was developed by using 7506-5446.3 and 4605.4-4242.9 cm −1 (1332.3-1836.1 nm and 2171.4-2356.9 nm), which included the amylose vibration band, which was 6834 cm −1 , while the toughness model was from 9403.8 to 6094.3 cm −1 (1063.4-1640.9 nm) and included 6834 and 8316 cm −1 . Amylose content is correlated with retrogradation behavior, which influences the textural properties of cooked rice [69,70].…”
Section: Prediction Performance Of Pls Regression Model For Texture O...mentioning
confidence: 99%
“…The model which was best for hardness prediction was developed by using 7506-5446.3 and 4605.4-4242.9 cm −1 (1332.3-1836.1 nm and 2171.4-2356.9 nm), which included the amylose vibration band, which was 6834 cm −1 , while the toughness model was from 9403.8 to 6094.3 cm −1 (1063.4-1640.9 nm) and included 6834 and 8316 cm −1 . Amylose content is correlated with retrogradation behavior, which influences the textural properties of cooked rice [69,70].…”
Section: Prediction Performance Of Pls Regression Model For Texture O...mentioning
confidence: 99%