首页> 外文会议>Conference on remote sensing for agriculture, ecosystems, and hydrology >Vineyard zonal management for grape quality assessment by combining airborne remote sensed imagery and soil sensors
【24h】

Vineyard zonal management for grape quality assessment by combining airborne remote sensed imagery and soil sensors

机译:通过将机载遥感影像与土壤传感器相结合,对葡萄园进行葡萄园质量评估

获取原文

摘要

Vineyard variability within the fields is well known by grape growers, producing different plant responses and fruit characteristics. Many technologies have been developed in last recent decades in order to assess this spatial variability, including remote sensing and soil sensors. In this paper we study the possibility of creating a stable classification system that better provides useful information for the grower, especially in terms of grape batch quality sorting. The work was carried out during 4 years in a rain-fed Tempranillo vineyard located in Rioja (Spain). NDVI was extracted from airborne imagery, and soil conductivity (EC) data was acquired by an EM38 sensor. Fifty-four vines were sampled at veraison for vegetative parameters and before harvest for yield and grape analysis. An Isocluster unsupervised classification in two classes was performed in 5 different ways, combining NDVI maps individually, collectively and combined with EC. The target vines were assigned in different zones depending on the clustering combination. Analysis of variance was performed in order to verify the ability of the combinations to provide the most accurate information. All combinations showed a similar behaviour concerning vegetative parameters. Yield parameters classify better by the EC-based clustering, whilst maturity grape parameters seemed to give more accuracy by combining all NDVIs and EC. Quality grape parameters (anthocyanins and phenolics), presented similar results for all combinations except for the NDVI map of the individual year, where the results were poorer. This results reveal that stable parameters (EC or/and NDVI all-together) clustering outcomes in better information for a vineyard zonal management strategy.
机译:葡萄种植者众所周知,田间葡萄园的可变性会产生不同的植物反应和果实特征。最近几十年来开发了许多技术来评估这种空间变异性,包括遥感和土壤传感器。在本文中,我们研究了建立稳定的分类系统的可能性,该分类系统可以为种植者提供更好的有用信息,尤其是在葡萄批次质量分类方面。这项工作是在位于西班牙里奥哈(Rioja)(西班牙)的由雨水喂养的Tempranillo葡萄园中进行的,历时4年。从航空影像中提取了NDVI,并通过EM38传感器获取了土壤电导率(EC)数据。对54个藤本进行了取样,以获取营养参数,并在收获前对其进行了产量和葡萄分析。通过5种不同的方式对Isocluster无监督分类进行了两种,分别将NDVI映射图,集体图谱和EC图谱组合在一起。根据聚类组合,将目标葡萄藤分配到不同的区域。为了验证组合提供最准确信息的能力,进行了方差分析。所有组合均显示出与营养参数相似的行为。通过基于EC的聚类,产量参数可以更好地分类,而成熟的葡萄参数似乎可以通过结合所有NDVI和EC来提供更高的准确性。高质量的葡萄参数(花青素和酚类)对所有组合均显示相似的结果,但单个年份的NDVI图除外,其结果较差。该结果表明,稳定的参数(EC或/和NDVI一起)聚类的结果可以为葡萄园分区管理策略提供更好的信息。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号