Using UAV images for semiautomatic detection of row-gaps in vineyards in Jelenec and Topoľčianky (Slovakia)

IF 0.5 Q3 GEOGRAPHY
A. Šupčík, I. Matečný
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引用次数: 0

Abstract

The use of UAV (Unmanned Aerial Vehicles) in precision viticulture leads to a more flexible and efficient approach to vineyard management. Images from UAV help determine the condition of the vineyard. Identification of the missing roots of the vineyard in a row by semi-automatic image classification and its comparison with manual classification is a goal of the paper. This study presents a new methodology for the segmentation of vine and row gaps. RGB (Red-Green-Blue) images, multispectral images, Near-Infrared (NIR) images, and Normalized Differential Vegetation Index (NDVI) images were tested and compared with manual classification. The percentage of row gap and the accuracy of individual images were determined. Object-oriented classification of the vine and row gaps in the buffer zone of the vineyard is a core of our method. Using geostatistical methods, such as zonal and logistic regression statistics, the accuracy of individual data in buffer zones was evaluated. Areas of interest were parts of vineyards in Jelenec and Topoľčianky. Success of the method detectomg outage (compared to manual classification) was achieved by images in the RGB spectrum: 96.45% for the Jelenec vineyard and 82.61% for the Topoľčianky vineyard. By this method, we quickly determine row gaps/vine which can be used to optimize or reduce the application of fertilizers to be used only on the vine. The method can be also used by inspection authorities to reveal the actual condition of the vineyard.
使用无人机图像半自动检测Jelenec和Topoľčianky葡萄园的行间隙(斯洛伐克)
无人机(UAV)在精确葡萄栽培中的使用,为葡萄园管理带来了更灵活、更有效的方法。来自无人机的图像有助于确定葡萄园的状况。本文研究的目标是利用半自动图像分类方法对葡萄园的成排缺根进行识别,并与人工分类方法进行比较。本研究提出了一种新的方法来分割藤和行间隙。对RGB(红绿蓝)图像、多光谱图像、近红外(NIR)图像和归一化植被指数(NDVI)图像进行了测试,并与人工分类进行了比较。确定了行间距百分比和单个图像的精度。面向对象的葡萄树和行间距在葡萄园的缓冲区的分类是我们的方法的核心。利用地学统计方法,如分区回归统计和逻辑回归统计,对缓冲带个别数据的准确性进行了评价。感兴趣的地区是耶勒内克和Topoľčianky的部分葡萄园。与人工分类相比,该方法在RGB光谱图像中实现了停机检测的成功率:Jelenec葡萄园为96.45%,Topoľčianky葡萄园为82.61%。通过这种方法,我们可以快速确定行间距/葡萄藤,可以用来优化或减少只在葡萄藤上使用的肥料的施用。这种方法也可以被检验机构用来揭示葡萄园的实际状况。
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来源期刊
CiteScore
0.80
自引率
0.00%
发文量
4
期刊介绍: Geographia Cassoviensis is a biannual peer-reviewed journal published by the Pavol Jozef Šafárik University in Košice since 2007. It is available both in print and open-access electronic version. The journal publishes original research articles from Geography and other closely-related research fields. Since 2016 the journal is indexed in SCOPUS and ERIH PLUS - European Reference Index for Humanities and Social Sciences, and since 2017 also in Emerging Sources Citation Index by Clarivate Analytics.
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