利用多光谱成像技术提高酿酒葡萄果实的收成

IF 1.1 4区 农林科学 Q4 FOOD SCIENCE & TECHNOLOGY
G. Iatrou, S. Mourelatos, S. Gewehr, S. Kalaitzopoulou, M. Iatrou, Z. Zartaloudis
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引用次数: 6

摘要

葡萄采收时间的确定可能是酿酒商最重要的决定,因为葡萄不是更年期水果,如果在完全成熟之前采收,其质量就会受到影响。这是因为糖含量、香气和颜色化合物只有在非更年期水果收获前才会增加。目前确定浆果成熟度的做法包括测量浆果样品的总可溶性固形物(TSS)和pH值,但这一过程既耗时又费力。另一方面,随着无人机(UAV)和现代超轻型相机的发展,种植者现在可以在农场规模上快速获取作物生理状态的数据和空间信息。浆果样品采集自葡萄藤(cv。采用多元线性回归(MLR)和支持向量机(SVM)估计TSS和pH值。SVM模型的分类准确率最高。此外,低类胡萝卜素反射指数2 (CRI2)的葡萄果实具有较高的TSS、pH和萜烯,并得到更高的酒精度。构建预测浆果中TSS的模型的重要性是显而易见的,因为这有助于预测葡萄酒的质量。目前的工作是初步汇编利用统计技术、遥感和作物生理数据制作浆果成熟监测工具的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using multispectral imaging to improve berry harvest for wine making grapes
The determination of time for grape harvest is probably the most important decision for wine making producers, because grapes are not climacteric fruits and if they are harvested before fully ripe their quality is compromised. This is because sugar content, aroma and color compounds increase only before harvest for non-climacteric fruits. The current practice for determining berry ripeness includes measurements of berry samples for total soluble solids (TSS) and pH, but this procedure is time consuming and laborious. On the other hand, with the development of unmanned aerial vehicles (UAV) and modern ultralight cameras the grower can now obtain data rapidly and also spatial information for crop's physiological status at farm scale. Berry samples were collected from grapevines (cv . Malagousia) and their reflectance spectra were used to estimate TSS and pH by Multiple Linear Regression (MLR) and Support Vector Machine (SVM). The highest classification accuracy was achieved using the SVM model. Moreover, berries taken by grapevines with low Carotenoid Reflectance Index 2 (CRI2) had higher TSS, pH and terpenes, and gave wine with higher alcohol by volume. The importance for constructing a model for predicting TSS in berries is obvious, because this can aid in the prediction of wine quality. The current work is a preliminary compilation of methodologies for making a monitoring tool of berry ripeness, using statistical techniques, remote sensing and crop physiological data.
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来源期刊
Ciencia E Tecnica Vitivinicola
Ciencia E Tecnica Vitivinicola Agricultural and Biological Sciences-Food Science
自引率
12.50%
发文量
5
期刊介绍: Ciência e Técnica Vitivinícola (Journal of Viticulture and Enology) is an international journal that publishes original articles, research notes and review articles, written in Portuguese or in English, on the various fields of the science and technology of vine and wine: Viticulture, Enology and Vitivinicultural economy.
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