Artificial intelligence-based tools for next-generation seed quality analysis

Sumeet Kumar Singh , Rashmi Jha , Saurabh Pandey , Chander Mohan , Chetna , Saipayan Ghosh , Satish Kumar Singh , Sarita Kumari , Ashutosh Singh
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Abstract

Innovation in agrotechnologies is urgently needed to fulfill the demand burden on food and agriculture industries. The key challenge in producing a high-quality, high-yielding crop is using quality seed and its identification. Seed quality identification in the seed industry often uses traditional methods based on manual observations, which are cumbersome and time-consuming. Still, there is always the risk of faulty reporting and non-uniformity in test results among different testing agencies. Because of the changing requirements of the seed industry, Artificial Intelligence (AI)-based tools and various methods have been developed to test the quality of seeds. AI-based tools have been extensively applied in different farming applications. This review explores these tools and strategies, including traditional, semi-automatic, or automated ones developed using machine learning. These include non-destructive techniques such as x-ray imaging, remote sensing, multispectral imaging, hyperspectral imaging, and near-infrared (NIR) spectroscopy, which are less expensive and time and/or labor-savings. Furthermore, we discuss the characteristics of AI-based techniques for depth analysis and their application in various aspects of seed quality, including seed vigor, seed health, seed germination, and seed viability. Lastly, we furhter evaluate the challenges of these methods and how they will provide healthy seeds to each farmer in the future and increase the overall production of crops. We propose to leverage AI-based tools to bridge the knowledge gap between traditional screening methods and integration of advanced technologies for better screening of crop seeds.
基于人工智能的下一代种子质量分析工具
迫切需要农业技术创新,以满足粮食和农业工业的需求负担。生产优质高产作物的关键挑战是使用优质种子及其鉴定。种子行业的种子质量鉴定通常采用基于人工观察的传统方法,这种方法繁琐且耗时。然而,不同的检测机构之间总是存在报告错误和检测结果不一致的风险。由于种子行业的需求不断变化,基于人工智能(AI)的工具和各种方法已经开发出来,以测试种子的质量。基于人工智能的工具已广泛应用于不同的农业应用。本文探讨了这些工具和策略,包括使用机器学习开发的传统、半自动或自动化工具和策略。这些技术包括非破坏性技术,如x射线成像、遥感、多光谱成像、高光谱成像和近红外(NIR)光谱,这些技术成本较低,节省时间和/或人力。此外,我们还讨论了基于人工智能的深度分析技术的特点及其在种子质量的各个方面的应用,包括种子活力、种子健康、种子发芽和种子活力。最后,我们进一步评估了这些方法的挑战,以及它们如何在未来为每个农民提供健康的种子,并提高作物的整体产量。我们建议利用基于人工智能的工具来弥合传统筛选方法与先进技术之间的知识差距,以更好地筛选作物种子。
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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