基于高光谱成像的毛豆与豆荚的空心鉴别

IF 4 2区 农林科学 Q2 CHEMISTRY, APPLIED
Xiangquan Gao , Shenghong Li , Shangsheng Qin , Yakai He , Yanchen Yang , Youwen Tian
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引用次数: 0

摘要

空心是带荚毛豆的常见缺陷,会影响其市场价值和产量。空心和正常豆荚毛豆的外观相似,这给检测和分拣带来了挑战。本研究利用高光谱反射成像和透射成像来检测空心带荚毛豆。建立了多种分类模型,包括偏最小二乘判别分析、支持向量机、随机森林、人工神经网络和线性判别分析。使用六种预处理方法(SG、MA、MSC、SNV、DT 和 WT)和三种特征选择方法(SVC-SPA、CARS 和 GA)对模型进行了优化。根据最优模型,对毛豆的空心区域进行可视化,并量化空心区域的比例。根据空心率的最佳阈值,对毛豆进行分类。结果表明,从使用八个特征波段的高光谱传输数据中得出的 SG-SPA-SVM 模型取得了最佳分类性能,在空心率阈值为 0.48 时,分类准确率达到 98%。它为相关吊舱的质量评估和光谱仪在生产分拣中的应用开发提供了科学依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hollow discrimination of edamame with pod based on hyperspectral imaging
Hollowness is a common defect in edamame with pod that affects its market value and yield. The similar appearance of hollow and normal edamame with pod makes detection and sorting challenging. This study utilized hyperspectral reflectance imaging and transmission imaging to detect hollow edamame with pods. Various classification models were constructed, including partial least squares discriminant analysis, support vector machine, random forest, artificial neural network, and linear discriminant analysis. Six preprocessing methods (SG, MA, MSC, SNV, DT, and WT) and three feature selection methods (SVC-SPA, CARS, and GA) were used to optimize the models. Based on the optimal model, the hollow regions of edamame were visualized, and the proportion of hollow areas was quantified. Based on the optimal threshold for hollow ratio, edamame classification was performed. Results indicate that the SG-SPA-SVM model, derived from hyperspectral transmission data using eight characteristic bands, achieved the best classification performance, attaining a classification accuracy of 98 % at a hollow ratio threshold of 0.48. It offers a scientific basis for quality assessment in related pod and the development of spectrometer applications in production sorting.
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来源期刊
Journal of Food Composition and Analysis
Journal of Food Composition and Analysis 工程技术-食品科技
CiteScore
6.20
自引率
11.60%
发文量
601
审稿时长
53 days
期刊介绍: The Journal of Food Composition and Analysis publishes manuscripts on scientific aspects of data on the chemical composition of human foods, with particular emphasis on actual data on composition of foods; analytical methods; studies on the manipulation, storage, distribution and use of food composition data; and studies on the statistics, use and distribution of such data and data systems. The Journal''s basis is nutrient composition, with increasing emphasis on bioactive non-nutrient and anti-nutrient components. Papers must provide sufficient description of the food samples, analytical methods, quality control procedures and statistical treatments of the data to permit the end users of the food composition data to evaluate the appropriateness of such data in their projects. The Journal does not publish papers on: microbiological compounds; sensory quality; aromatics/volatiles in food and wine; essential oils; organoleptic characteristics of food; physical properties; or clinical papers and pharmacology-related papers.
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