Litcius/Paper detail

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

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

2025Crop Design14 citationsDOIOpen Access PDF

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 require less time and labor. Further, it analyzes the characteristics of AI-based techniques, their depth analysis, and their application in various aspects of seed quality, including seed vigor, seed health, seed germination, and seed viability. Lastly, we will 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 in traditional screening methods and integration of advanced technologies for better screening of crop seeds. • Seed quality determination is critical for optimal agricultural production. • Traditional methods of determining the seed quality are inefficient and time-consuming. • Next-generation seed quality-determining methods involving seed imaging combined with artificial intelligence pave the way for rapid quality seed inspection that provides accurate results. • These advances with large datasets and real-time analysis can significantly enhance seed testing and contribute to advancing global food security.

Topics & Concepts

Quality (philosophy)Computer scienceArtificial intelligencePhysicsQuantum mechanicsSpectroscopy and Chemometric AnalysesStatistical Methods and ApplicationsSmart Agriculture and AI