SSC and pH prediction and maturity classification of grapes based on hyperspectral imaging

IF 6.3 Q1 AGRICULTURAL ENGINEERING
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引用次数: 0

Abstract

Soluble solids content (SSC) and pH of red globe grapes are crucial measures of quality. In this paper, we used hyperspectral imaging technology to achieve nondestructive detection and distribution visualization of SSC and pH of red globe grapes. First, the hyperspectral images of samples were collected. Then, CARS, SPA, GA, IRIV were used to extract feature variables from raw spectral (RAW) information. The PLSR prediction models of samples were developed. By comparing the different prediction models, RAW-IRIV-PLSR was selected as the optimal model. Finally, the SSC and pH of the samples were calculated to obtain a grayscale image and perform a pseudo-color transformation to visualize the distribution of SSC and pH. By studying the classification of the maturity of samples, it was concluded that the best discriminant classification model of maturity was RAW-IRIV-ELM. Hyperspectral also provided a new method for maturity stage classification of red globe grapes.

基于高光谱成像的葡萄 SSC 值和 pH 值预测及成熟度分类
红地球葡萄的可溶性固形物含量(SSC)和 pH 值是衡量葡萄质量的关键指标。本文利用高光谱成像技术实现了对红地球葡萄 SSC 和 pH 值的无损检测和分布可视化。首先,采集样品的高光谱图像。然后,使用 CARS、SPA、GA、IRIV 从原始光谱(RAW)信息中提取特征变量。建立了样本的 PLSR 预测模型。通过比较不同的预测模型,RAW-IRIV-PLSR 被选为最佳模型。最后,通过计算样品的 SSC 值和 pH 值获得灰度图像,并进行伪彩色转换,以直观地显示 SSC 值和 pH 值的分布情况。通过对样本成熟度分类的研究,得出了最佳成熟度判别分类模型为 RAW-IRIV-ELM 的结论。高光谱还为红地球葡萄的成熟期分类提供了一种新方法。
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CiteScore
4.20
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