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首页> 外文期刊>Postharvest Biology and Technology >Nondestructive detection of chilling injury in cucumber fruit using hyperspectral imaging with feature selection and supervised classification
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Nondestructive detection of chilling injury in cucumber fruit using hyperspectral imaging with feature selection and supervised classification

机译:高光谱成像用特征选择和监督分类无损检测黄瓜果实冷冻损伤

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摘要

Chilling injury, as a physiological disorder in cucumbers, occurs after the fruit has been subjected to low temperatures. It is thus desirable to detect chilling injury at early stages and/or remove chilling injured cucumbers during sorting and grading. This research was aimed to apply hyperspectral imaging technique, combined with feature selection methods and supervised classification algorithms, to detect chilling injury in cucumbers. Hyperspectral reflectance (500-675 nm) and transmittance (675-1000 nm) images for normal and chilling injured cucumbers were acquired, using an in-house developed online hyperspectral imaging system. Three feature selection methods including mutual information feature selection (MIFS), max-relevance min-redundancy (MRMR), and sequential forward selection (SFS) were used and compared for optimal wavebands selection. Supervised classifications with naive Bayes (NB), support vector machine (SVM), and k-nearest neighbor (KNN) were then implemented for the two-class (i.e., normal and chilling) and three-class (i.e., normal, lightly chilling, and severely chilling) classifications based on the spectral and image analysis at selected two-band ratios. It was found that the majority of the optimal wavebands selected by MIFS, MRMR, and SFS for both two-class and three-class classifications were from the spectral transmittance images in the short-near infrared region. The SFS feature selection method together with the SVM classifier resulted in the best overall classification accuracy of 100%, and the overall accuracy of 90.5% for the three-class classification, based on the spectral analysis. The classification results based on the textural features (first-order statistics and second-order statistics features) extracted from the optimal two-band ratio images were comparable to those achieved using the spectral features, with the best overall accuracies of 100% and 91.6% for the two-class and the three class classifications, respectively. These results demonstrated the potential of hyperspectral imaging technique for online detection of chilling injury in cucumbers. (C) 2015 Elsevier B.V. All rights reserved.
机译:在水果经受低温之后发生在黄瓜的生理疾病中,损伤损伤。因此,期望在分类和分级期间检测早期阶段的寒冷损伤和/或去除冷却损伤的黄瓜。该研究旨在应用高光谱成像技术,结合特征选择方法和监督分类算法,以检测黄瓜中的冷却损伤。利用内部开发的在线高光谱成像系统获得了高光谱反射(500-675nm)和透射率(675-1000nm)的正常和冷却受伤的黄瓜图像。使用包括相互信息特征选择(MIFS),MAX-相关性最小冗余(MRMR)和顺序前进选择(SFS)的三个特征选择方法,并比较以获得最佳波带选择。随着双级(即正常和冷却)和三类(即正常,轻微的冷却基于所选双频率比的光谱和图像分析,基于光谱和图像分析的分类和严重寒冷的分类。发现MIFS,MRMR和SFS选择的大部分最佳波段用于两班和三类分类的来自短近红外区域中的光谱透射率图像。 SFS特征选择方法与SVM分类器一起导致最佳整体分类精度为100%,基于光谱分析,三类分类的整体精度为90.5%。从最佳双频比图像中提取的纹理特征(一阶统计和二阶统计特征)的分类结果与使用光谱特征实现的那些相当,总体精度为100%和91.6%对于两班和三类分类。这些结果表明了在在黄瓜中在线检测冷冻损伤的高光谱成像技术的潜力。 (c)2015 Elsevier B.v.保留所有权利。

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