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Prediction of sweetness and amino acid content in soybean crops from hyperspectral imagery

✍ Scribed by Sildomar Takahashi Monteiro; Yohei Minekawa; Yukio Kosugi; Tsuneya Akazawa; Kunio Oda


Publisher
Elsevier Science
Year
2007
Tongue
English
Weight
892 KB
Volume
62
Category
Article
ISSN
0924-2716

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✦ Synopsis


Hyperspectral image data provides a powerful tool for non-destructive crop analysis. This paper investigates a hyperspectral image data-processing method to predict the sweetness and amino acid content of soybean crops. Regression models based on artificial neural networks were developed in order to calculate the level of sucrose, glucose, fructose, and nitrogen concentrations, which can be related to the sweetness and amino acid content of vegetables. A performance analysis was conducted comparing regression models obtained using different preprocessing methods, namely, raw reflectance, second derivative, and principal components analysis. This method is demonstrated using high-resolution hyperspectral data of wavelengths ranging from the visible to the near infrared acquired from an experimental field of green vegetable soybeans. The best predictions were achieved using a nonlinear regression model of the second derivative transformed dataset. Glucose could be predicted with greater accuracy, followed by sucrose, fructose and nitrogen. The proposed method provides the possibility to provide relatively accurate maps predicting the chemical content of soybean crop fields.


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