Deep Convolutional Neural Network for Detection and Prediction of Waxy Corn Seed Viability Using Hyperspectral Reflectance Imaging

IF 1.9 Q2 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Xiaoqing Zhao, L. Pang, Lian-Ming Wang, Sen Men, Lei Yan
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引用次数: 1

Abstract

This paper aimed to combine hyperspectral imaging (378–1042 nm) and a deep convolutional neural network (DCNN) to rapidly and non-destructively detect and predict the viability of waxy corn seeds. Different viability levels were set by artificial aging (aging: 0 d, 3 d, 6 d, and 9 d), and spectral data for the first 10 h of seed germination were continuously collected. Bands that were significantly correlated (SC) with moisture, protein, starch, and fat content in the seeds were selected, and another optimal combination was extracted using a successive projection algorithm (SPA). The support vector machine (SVM), k-nearest neighbor (KNN), random forest (RF), and deep convolutional neural network (DCNN) approaches were used to establish the viability detection and prediction models. During detection, with the addition of different levels, the recognition effect of the first three methods decreased, while the DCNN method remained relatively stable (always above 95%). When using the previous 2.5 h data, the prediction accuracy rate was generally higher than the detection model. Among them, SVM + full band increased the most, while DCNN + full band was the highest, reaching 98.83% accuracy. These results indicate that the combined use of hyperspectral imaging technology and the DCNN method is more conducive to the rapid detection and prediction of seed viability.
利用高光谱反射成像技术检测和预测糯玉米种子活力的深度卷积神经网络
本文旨在将高光谱成像(378–1042 nm)和深度卷积神经网络(DCNN)相结合,快速无损地检测和预测糯玉米种子的生存能力。通过人工老化(老化:0天、3天、6天和9天)设置不同的活力水平,并连续收集种子发芽前10小时的光谱数据。选择与种子中的水分、蛋白质、淀粉和脂肪含量显著相关(SC)的条带,并使用连续投影算法(SPA)提取另一个最佳组合。使用支持向量机(SVM)、k近邻(KNN)、随机森林(RF)和深度卷积神经网络(DCNN)方法来建立生存能力检测和预测模型。在检测过程中,随着不同级别的添加,前三种方法的识别效果有所下降,而DCNN方法保持相对稳定(始终在95%以上)。当使用之前的2.5小时数据时,预测准确率通常高于检测模型。其中,SVM+全频带的准确率提高幅度最大,DCNN+全频带准确率最高,达到98.83%。这些结果表明,高光谱成像技术和DCNN方法的结合使用更有利于种子活力的快速检测和预测。
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来源期刊
Mathematical & Computational Applications
Mathematical & Computational Applications MATHEMATICS, INTERDISCIPLINARY APPLICATIONS-
自引率
10.50%
发文量
86
审稿时长
12 weeks
期刊介绍: Mathematical and Computational Applications (MCA) is devoted to original research in the field of engineering, natural sciences or social sciences where mathematical and/or computational techniques are necessary for solving specific problems. The aim of the journal is to provide a medium by which a wide range of experience can be exchanged among researchers from diverse fields such as engineering (electrical, mechanical, civil, industrial, aeronautical, nuclear etc.), natural sciences (physics, mathematics, chemistry, biology etc.) or social sciences (administrative sciences, economics, political sciences etc.). The papers may be theoretical where mathematics is used in a nontrivial way or computational or combination of both. Each paper submitted will be reviewed and only papers of highest quality that contain original ideas and research will be published. Papers containing only experimental techniques and abstract mathematics without any sign of application are discouraged.
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