The Use of Computer Vision to Improve the Affinity of Rootstock-Graft Combinations and Identify Diseases of Grape Seedlings

IF 2.1 Q2 ENGINEERING, MULTIDISCIPLINARY Inventions Pub Date : 2023-07-19 DOI:10.3390/inventions8040092
Marina Rudenko, Y. Plugatar, Vadim Korzin, A. Kazak, Nadezhda I. Gallini, Natalia Gorbunova
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引用次数: 2

Abstract

This study explores the application of computer vision for enhancing the selection of rootstock-graft combinations and detecting diseases in grape seedlings. Computer vision has various applications in viticulture, but publications and research have not reported the use of computer vision in rootstock-graft selection, which defines the novelty of this research. This paper presents elements of the technology for applying computer vision to rootstock-graft combinations and includes an analysis of grape seedling cuttings. This analysis allows for a more accurate determination of the compatibility between rootstock and graft, as well as the detection of potential seedling diseases. The utilization of computer vision to automate the grafting process of grape cuttings offers significant benefits in terms of increased efficiency, improved quality, and reduced costs. This technology can replace manual labor and ensure economic efficiency and reliability, among other advantages. It also facilitates monitoring the development of seedlings to determine the appropriate planting time. Image processing algorithms play a vital role in automatically determining seedling characteristics such as trunk diameter and the presence of any damage. Furthermore, computer vision can aid in the identification of diseases and defects in seedlings, which is crucial for assessing their overall quality. The automation of these processes offers several advantages, including increased efficiency, improved quality, and reduced costs through the reduction of manual labor and waste. To fulfill these objectives, a unique robotic assembly line is planned for the grafting of grape cuttings. This line will be equipped with two conveyor belts, a delta robot, and a computer vision system. The use of computer vision in automating the grafting process for grape cuttings offers significant benefits in terms of efficiency, quality improvement, and cost reduction. By incorporating image processing algorithms and advanced robotics, this technology has the potential to revolutionize the viticulture industry. Thanks to training a computer vision system to analyze data on rootstock and graft grape varieties, it is possible to reduce the number of defects by half. The implementation of a semi-automated computer vision system can improve crossbreeding efficiency by 90%. Reducing the time spent on pairing selection is also a significant advantage. While manual selection takes between 1 and 2 min, reducing the time to 30 s using the semi-automated system, and the prospect of further automation reducing the time to 10–15 s, will significantly increase the productivity and efficiency of the process. In addition to the aforementioned benefits, the integration of computer vision technology in grape grafting processes brings several other advantages. One notable advantage is the increased accuracy and precision in pairing selection. Computer vision algorithms can analyze a wide range of factors, including size, shape, color, and structural characteristics, to make more informed decisions when matching rootstock and graft varieties. This can lead to better compatibility and improved overall grafting success rates.
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利用计算机视觉提高葡萄砧木-嫁接组合亲和性及病害识别
本研究探讨了计算机视觉在葡萄苗木嫁接组合选择和病害检测中的应用。计算机视觉在葡萄栽培中有多种应用,但出版物和研究尚未报道将计算机视觉用于砧木嫁接选择,这定义了该研究的新颖性。本文介绍了将计算机视觉应用于砧木嫁接组合的技术要素,并包括对葡萄幼苗插枝的分析。这种分析可以更准确地确定砧木和嫁接之间的相容性,以及检测潜在的幼苗疾病。利用计算机视觉自动化葡萄插枝的嫁接过程在提高效率、提高质量和降低成本方面提供了显著的好处。该技术具有替代人工、保证经济效益和可靠性等优点。它还有助于监测幼苗的发育,以确定适当的种植时间。图像处理算法在自动确定幼苗特征(如树干直径和是否存在损伤)方面起着至关重要的作用。此外,计算机视觉可以帮助识别幼苗的疾病和缺陷,这对评估它们的整体质量至关重要。这些过程的自动化提供了几个优点,包括提高效率、改进质量,并通过减少手工劳动和浪费来降低成本。为了实现这些目标,一条独特的机器人装配线计划用于嫁接葡萄插枝。这条生产线将配备两条传送带,一个delta机器人和一个计算机视觉系统。在葡萄插枝的自动化嫁接过程中使用计算机视觉在效率、质量改进和成本降低方面提供了显著的好处。通过结合图像处理算法和先进的机器人技术,这项技术有可能彻底改变葡萄种植业。由于训练了计算机视觉系统来分析砧木和嫁接葡萄品种的数据,有可能将缺陷数量减少一半。采用半自动计算机视觉系统,杂交效率可提高90%。减少花在配对选择上的时间也是一个显著的优势。虽然人工选择需要1到2分钟,但使用半自动化系统将时间减少到30秒,并且进一步自动化将时间减少到10-15秒的前景,将显着提高该过程的生产率和效率。除了上述好处之外,将计算机视觉技术集成到葡萄嫁接过程中还带来了其他几个优点。一个显著的优点是提高了配对选择的准确性和精度。计算机视觉算法可以分析各种因素,包括大小、形状、颜色和结构特征,从而在匹配砧木和嫁接品种时做出更明智的决定。这可以导致更好的相容性和提高整体嫁接成功率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Inventions
Inventions Engineering-Engineering (all)
CiteScore
4.80
自引率
11.80%
发文量
91
审稿时长
12 weeks
期刊最新文献
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