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首页> 外文期刊>Journal of the Science of Food and Agriculture >Non-destructive classification of apple bruising time based on visible and near-infrared hyperspectral imaging
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Non-destructive classification of apple bruising time based on visible and near-infrared hyperspectral imaging

机译:基于可见光和近红外高光谱成像的苹果萎缩时间的非破坏性分类

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摘要

BACKGROUND Bruising time of apple is one of the most important factors for internal quality assessment. The present study aimed to establish a non-destructive method for the classification of apple bruising time using visible and near-infrared (VNIR) hyperspectral imaging. In this study, VNIR hyperspectral images were obtained and analyzed at seven bruising periods. Moreover, regions of interest (ROIs) were chosen to construct the bruised region classification model, and spectra of bruised regions were collected and resampled based on four different methods. Subsequently, machine learning algorithms were employed and used for dealing with the time classification model of apples. In order to reduce data redundancy and improve the accuracy of the classification model, a tree-based assembling learning model was used to select feature wavelengths, and linear discriminant analysis (LDA) was used to improve the discernibility of data. RESULTS The results revealed that the random forest (RF) model can precisely locate bruised regions, while the gradient boosting decision tree (GBDT) model can validly classify apple bruising times with 70.59% accuracy. Data of 128 wavebands were compressed to 13 wavebands, providing a high accuracy of 92.86%. CONCLUSION The results prove that the hyperspectral technique can be used for predicting apple bruising time, which will help to assess the internal quality and safety of apples. (c) 2018 Society of Chemical Industry
机译:苹果的背景繁琐时间是内部质量评估最重要的因素之一。本研究旨在使用可见光和近红外(VNIR)高光谱成像来建立苹果萎缩时间的分类的非破坏性方法。在该研究中,获得了VNIR高光谱图像并在七个繁琐时期分析。此外,选择感兴趣的区域(ROI)构建刮伤区域分类模型,并基于四种不同方法收集和重采样进行擦伤区域的光谱。随后,采用机器学习算法并用于处理苹果的时间分类模型。为了降低数据冗余并提高分类模型的准确性,使用基于树的组装学习模型来选择特征波长,并且使用线性判别分析(LDA)来改善数据的可辨别。结果结果表明,随机森林(RF)模型可以精确地定位瘀伤区域,而梯度升压决策树(GBDT)模型可以有效地将苹果萎缩时间分类为70.59%。 128波带的数据被压缩为13波段,提供高精度为92.86%。结论结果证明了高光谱技术可用于预测苹果萎缩时间,这将有助于评估苹果的内部质量和安全性。 (c)2018化学工业协会

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