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首页> 外文期刊>Sensing and Instrumentation for Food Quality and Safety >Classification of in-shell peanut kernels nondestructively using VIS/NIR reflectance spectroscopy
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Classification of in-shell peanut kernels nondestructively using VIS/NIR reflectance spectroscopy

机译:使用VIS / NIR反射光谱无损地对带壳花生仁进行分类

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One of the grading factors for peanuts is their classification into peanuts with good or bad kernels. Traditional manual methods are labor intensive and subjective. A device by which the classification could be done rapidly and without the need to shell the peanuts would be very useful for the peanut industry. In this work VIS/NIR spectroscopy was used for this purpose. Reflectance spectra were collected for peanut pods (in-shell peanuts) in the wavelength range of 400–2500 nm. A calibration group of about 200 pods were initially scanned to train the classification algorithm. Each individual pod was shelled and the kernels were visually examined and classified as bad if they had any kind of damage, discoloration or immaturity. The remaining pods were marked as good ones. The Principal component analysis model generated from primary spectra with or without pretreatments gave explained variance better than 99%. The maximum normalization model with the ability of characterizing good and bad kernels with an accuracy of 80% and with low SEP and RMSEP values of 0.43, would be useful in the quality characterization of in-shell peanuts.
机译:花生的分级因素之一是将其分类为仁好或坏的花生。传统的手工方法是劳动密集型和主观的。可以快速进行分类而无需去壳花生的设备对于花生工业将非常有用。在这项工作中,VIS / NIR光谱仪用于此目的。收集了花生荚(带壳花生)在400–2500 nm波长范围内的反射光谱。首先扫描约200个豆荚的校准组,以训练分类算法。每个豆荚都被去壳,如果果仁有任何损坏,变色或不成熟,则对果仁进行目视检查并归类为不良。其余豆荚被标记为好豆荚。从有或没有预处理的主光谱生成的主成分分析模型给出的解释方差优于99%。最大归一化模型能够以80%的准确度表征好坏玉米粒,并且SEP和RMSEP值低至0.43,这对带壳花生的质量表征非常有用。

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