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首页> 外文期刊>Progress in Artificial Intelligence >Discrimination of Grape Seeds Using Laser-Induced Breakdown Spectroscopy in Combination with Region Selection and Supervised Classification Methods
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Discrimination of Grape Seeds Using Laser-Induced Breakdown Spectroscopy in Combination with Region Selection and Supervised Classification Methods

机译:使用激光诱导的击穿光谱辨别葡萄种子与区域选择和监督分类方法结合

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摘要

The wine-making industry generates a considerable amount of grape pomace. Grape seeds, as an important part of pomace, are rich in bioactive compounds and can be reutilized to produce useful derivatives. The nutritional properties of grape seeds are largely influenced by the cultivar, which calls for effective identification. In the present work, the spectral profiles of grape seeds belonging to three different cultivars were collected by laser-induced breakdown spectroscopy (LIBS). Three conventional supervised classification methods and a deep learning method, a one-dimensional convolutional neural network (CNN), were applied to establish discriminant models to explore the relationship between spectral responses and cultivar information. Interval partial least squares (iPLS) algorithm was successfully used to extract the spectral region (402.74-426.87 nm) relevant for elemental composition in grape seeds. By comparing the discriminant models based on the full spectra and the selected spectral regions, the CNN model based on the full spectra achieved the optimal overall performance, with classification accuracy of 100% and 96.7% for the calibration and prediction sets, respectively. This work demonstrated the reliability of LIBS as a rapid and accurate approach for identifying grape seeds and will assist in the utilization of certain genotypes with desirable nutritional properties essential for production rather than their being discarded as waste.
机译:酿酒产业产生了相当数量的葡萄渣。葡萄种子作为焊的重要组成部分,富含生物活性化合物,可以再利用以产生有用的衍生物。葡萄种子的营养特性主要受到品种的影响,呼吁有效鉴定。在目前的工作中,通过激光诱导的击穿光谱(LIBS)收集属于三种不同品种的葡萄种子的光谱谱。三个传统的监督分类方法和深度学习方法,应用一维卷积神经网络(CNN),以建立判别模型来探讨光谱响应和品种信息之间的关系。间隔部分最小二乘(IPLS)算法已成功地用于提取与葡萄种子中的元素组合物相关的光谱区域(402.74-426.87nm)。通过基于全光谱和所选光谱区域的判别模型进行比较,基于全光谱的CNN模型实现了最佳的整体性能,分别为校准和预测集的分类精度为100%和96.7%。这项工作展示了Libs作为识别葡萄种子的快速准确的方法,并且将有助于利用某些基因型,其具有所需的营养特性,而不是它们被丢弃为废物。

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