LAPSE:2023.11382v1
Published Article

LAPSE:2023.11382v1
Classification for GM and Non-GM Maize Kernels Based on NIR Spectra and Deep Learning
February 27, 2023
Abstract
The classification of GM and non-GM maize kernels is fundamental for further analysis of the gene action in maize. Therefore, a complete and novel detection scheme based on near-infrared spectra was designed to distinguish GM and non-GM maize kernels. Hyperspectral images (935−1720 nm) of 777 maize kernels from 3 kinds were captured, and the average spectra of the maize kernels were extracted for modeling analysis. The classical modeling methods based on feature engineering were first studied, and the backpropagation neural network−genetic algorithm model showed the best performance with a prediction accuracy of 0.861. Then, novel modeling methods based on deep learning were developed. To dig out the interactive information between different bands and match the application scenarios, the original spectra were transformed into two-dimensional matrices before establishing the deep learning models. A modified convolution neural network (i.e., VGG net) with dilated convolution was finally constructed to classify the maize kernels, and the prediction accuracy reached 0.961. This research provides a referential and novel way to detect GM maize kernels. Future research will improve the detection scheme for monitoring unauthorized GM organisms by introducing the visualization technology of deep learning.
The classification of GM and non-GM maize kernels is fundamental for further analysis of the gene action in maize. Therefore, a complete and novel detection scheme based on near-infrared spectra was designed to distinguish GM and non-GM maize kernels. Hyperspectral images (935−1720 nm) of 777 maize kernels from 3 kinds were captured, and the average spectra of the maize kernels were extracted for modeling analysis. The classical modeling methods based on feature engineering were first studied, and the backpropagation neural network−genetic algorithm model showed the best performance with a prediction accuracy of 0.861. Then, novel modeling methods based on deep learning were developed. To dig out the interactive information between different bands and match the application scenarios, the original spectra were transformed into two-dimensional matrices before establishing the deep learning models. A modified convolution neural network (i.e., VGG net) with dilated convolution was finally constructed to classify the maize kernels, and the prediction accuracy reached 0.961. This research provides a referential and novel way to detect GM maize kernels. Future research will improve the detection scheme for monitoring unauthorized GM organisms by introducing the visualization technology of deep learning.
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Keywords
classification, deep learning, genetic modification, maize kernel, NIR spectra
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Suggested Citation
Wei Y, Yang C, He L, Wu F, Yu Q, Hu W. Classification for GM and Non-GM Maize Kernels Based on NIR Spectra and Deep Learning. (2023). LAPSE:2023.11382v1
Author Affiliations
Wei Y: School of Information Engineering, Huzhou University, Huzhou 313000, China; Zhejiang Province Key Laboratory of Smart Management & Application of Modern Agricultural Resources, Huzhou 313000, China
Yang C: School of Information Engineering, Huzhou University, Huzhou 313000, China; Zhejiang Province Key Laboratory of Smart Management & Application of Modern Agricultural Resources, Huzhou 313000, China
He L: School of Information Engineering, Huzhou University, Huzhou 313000, China; Zhejiang Province Key Laboratory of Smart Management & Application of Modern Agricultural Resources, Huzhou 313000, China
Wu F: School of Materials and Chemical Engineering, Chongqing University of Arts and Sciences, Chongqing 402160, China
Yu Q: School of Electronic Information, Huzhou College, Huzhou 313000, China
Hu W: School of Information Engineering, Huzhou University, Huzhou 313000, China; Zhejiang Province Key Laboratory of Smart Management & Application of Modern Agricultural Resources, Huzhou 313000, China
Yang C: School of Information Engineering, Huzhou University, Huzhou 313000, China; Zhejiang Province Key Laboratory of Smart Management & Application of Modern Agricultural Resources, Huzhou 313000, China
He L: School of Information Engineering, Huzhou University, Huzhou 313000, China; Zhejiang Province Key Laboratory of Smart Management & Application of Modern Agricultural Resources, Huzhou 313000, China
Wu F: School of Materials and Chemical Engineering, Chongqing University of Arts and Sciences, Chongqing 402160, China
Yu Q: School of Electronic Information, Huzhou College, Huzhou 313000, China
Hu W: School of Information Engineering, Huzhou University, Huzhou 313000, China; Zhejiang Province Key Laboratory of Smart Management & Application of Modern Agricultural Resources, Huzhou 313000, China
Journal Name
Processes
Volume
11
Issue
2
First Page
486
Year
2023
Publication Date
2023-02-06
ISSN
2227-9717
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PII: pr11020486, Publication Type: Journal Article
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LAPSE:2023.11382v1
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https://doi.org/10.3390/pr11020486
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[v1] (Original Submission)
Feb 27, 2023
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Feb 27, 2023
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