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基于光谱成像分析算法的马铃薯品种检测研究

Research on detection of potato varieties based on spectral imaging analytical algorithm.

作者信息

Li You, Chen Zhaoqing, Zhang Fenyun, Wei Zhenbo, Huang Yun, Chen Changqing, Zheng Yurui, Wei Qiquan, Sun Hongwei, Chen Fengnong

机构信息

School of Automation, Hangzhou Dianzi University, Hanzhou, Zhejiang Province 310018, China.

College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou, Zhejiang Province 310058, China.

出版信息

Spectrochim Acta A Mol Biomol Spectrosc. 2024 Apr 15;311:123966. doi: 10.1016/j.saa.2024.123966. Epub 2024 Jan 30.

Abstract

Potatoes are popular among consumers due to their high yield and delicious taste. However, due to the numerous varieties of potatoes, different varieties are suitable for different processing methods. Therefore, it is necessary to distinguish varieties after harvest to meet the needs of processing enterprises and consumers. In this study, a new visible-near-infrared spectroscopic analysis method was proposed, which can achieve detection of five potato varieties. The method measures the transmission and reflection spectra of potatoes using a spectral acquisition system, encodes one-dimensional spectra into two-dimensional images using Gramian Angular Summation Field (GASF), Gramian Angular Difference Field (GADF), Markov Transition Field (MTF) and Recurrence Plot (RP), and improves the coordinated attention mechanism module and embeds the improved module into the ConvNeXt V2 model to build the ConvNeXt V2-CAP model for potato variety classification. The results show that compared with directly using one-dimensional classification models, image encoding of spectral data for classification greatly improves the accuracy. Among them, the best accuracy of 99.54% is achieved by using GADF image encoding of transmission spectra combined with the ConvNeXt V2-CAP model for classification, which is 16.28% higher than the highest accuracy of the one-dimensional classification model. The CAP attention mechanism module improves the performance of the model, especially when the dataset is small. When the training set is reduced to 150 images, the accuracy of the model is improved by 2.33% compared to the original model. Therefore, it is feasible to classify potato varieties using visible-near infrared spectroscopy and image encoding technology.

摘要

土豆因其高产和美味而深受消费者喜爱。然而,由于土豆品种繁多,不同品种适合不同的加工方法。因此,收获后有必要区分品种,以满足加工企业和消费者的需求。本研究提出了一种新的可见 - 近红外光谱分析方法,该方法可以实现对五个土豆品种的检测。该方法使用光谱采集系统测量土豆的透射和反射光谱,利用格拉姆角和场(GASF)、格拉姆角差场(GADF)、马尔可夫转移场(MTF)和递归图(RP)将一维光谱编码为二维图像,并改进了协同注意力机制模块,将改进后的模块嵌入到ConvNeXt V2模型中,构建用于土豆品种分类的ConvNeXt V2 - CAP模型。结果表明,与直接使用一维分类模型相比,对光谱数据进行图像编码用于分类大大提高了准确率。其中,使用透射光谱的GADF图像编码结合ConvNeXt V2 - CAP模型进行分类时,获得了99.54%的最佳准确率,比一维分类模型的最高准确率高出16.28%。CAP注意力机制模块提高了模型的性能,特别是在数据集较小时。当训练集减少到150张图像时,模型的准确率比原始模型提高了2.33%。因此,利用可见 - 近红外光谱和图像编码技术对土豆品种进行分类是可行的。

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