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基于高光谱成像与优化卷积神经网络联用的大麦籽粒中脱氧雪腐镰刀菌烯醇含量的判别。

Discrimination of Deoxynivalenol Levels of Barley Kernels Using Hyperspectral Imaging in Tandem with Optimized Convolutional Neural Network.

机构信息

College of Engineering, China Agricultural University, Beijing 100083, China.

出版信息

Sensors (Basel). 2023 Feb 28;23(5):2668. doi: 10.3390/s23052668.

Abstract

Deoxynivalenol (DON) in raw and processed grain poses significant risks to human and animal health. In this study, the feasibility of classifying DON levels in different genetic lines of barley kernels was evaluated using hyperspectral imaging (HSI) (382-1030 nm) in tandem with an optimized convolutional neural network (CNN). Machine learning methods including logistic regression, support vector machine, stochastic gradient descent, K nearest neighbors, random forest, and CNN were respectively used to develop the classification models. Spectral preprocessing methods including wavelet transform and max-min normalization helped to enhance the performance of different models. A simplified CNN model showed better performance than other machine learning models. Competitive adaptive reweighted sampling (CARS) in combination with successive projections algorithm (SPA) was applied to select the best set of characteristic wavelengths. Based on seven wavelengths selected, the optimized CARS-SPA-CNN model distinguished barley grains with low levels of DON (<5 mg/kg) from those with higher levels (5 mg/kg < DON ≤ 14 mg/kg) with an accuracy of 89.41%. The lower levels of DON class I (0.19 mg/kg ≤ DON ≤ 1.25 mg/kg) and class II (1.25 mg/kg < DON ≤ 5 mg/kg) were successfully distinguished based on the optimized CNN model, yielding a precision of 89.81%. The results suggest that HSI in tandem with CNN has great potential for discrimination of DON levels of barley kernels.

摘要

脱氧雪腐镰刀菌烯醇(DON)在原粮和加工粮中对人类和动物健康构成重大威胁。本研究采用 382-1030nm 高光谱成像(HSI)技术与优化的卷积神经网络(CNN)相结合,评估了对大麦籽粒不同遗传系 DON 水平进行分类的可行性。分别采用逻辑回归、支持向量机、随机梯度下降、K 最近邻、随机森林和 CNN 等机器学习方法构建分类模型。光谱预处理方法包括小波变换和极大-极小归一化,有助于提高不同模型的性能。简化的 CNN 模型性能优于其他机器学习模型。竞争自适应重加权采样(CARS)与连续投影算法(SPA)相结合,用于选择最佳特征波长集。基于选择的七个波长,优化的 CARS-SPA-CNN 模型可将 DON 含量较低(<5mg/kg)的大麦籽粒与含量较高(5mg/kg< DON ≤14mg/kg)的大麦籽粒区分开来,准确率为 89.41%。基于优化的 CNN 模型成功区分了 DON Ⅰ级(0.19mg/kg≤ DON ≤1.25mg/kg)和Ⅱ级(1.25mg/kg< DON ≤5mg/kg)的低 DON 水平,准确率为 89.81%。结果表明,HSI 与 CNN 相结合具有鉴别大麦籽粒 DON 水平的巨大潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5dfc/10007200/8bf67fe13887/sensors-23-02668-g001.jpg

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