?? AI for Seeds: Next-Gen Quality Control ??
AI is transforming seed quality analysis with advanced techniques like deep learning and non-destructive imaging. This newsletter highlights recent research innovations in seed viability, vigour, purity, and classification, paving the way for smarter, more efficient agriculture.
Deep learning techniques in high-throughput seed phenotyping technologies (Zhou et al., 2025)
The research paper, titled "Application of Deep Learning for High-Throughput Phenotyping of Seed: A Review," is authored by Chen Jin, Lei Zhou, Yuanyuan Pu, Chu Zhang, Hengnian Qi, and Yiying Zhao. These researchers are affiliated with leading institutions across China ???? and Ireland ????, including:
Background of the Research
This study reviews the integration of deep learning techniques into high-throughput seed phenotyping technologies, offering a non-destructive, accurate, and scalable solution for evaluating seed quality.
The research highlights the potential of these technologies in addressing global agricultural challenges, such as:
The paper emphasizes the synergy between deep learning models (e.g., CNNs, Transformers, RNNs) and advanced imaging technologies like hyperspectral, X-ray, and terahertz imaging for evaluating critical seed traits, including variety classification, defect detection, vigor analysis, and purity assessment.
Key Insights:
AI Tools for Seed Quality Assessment (Kumar Singh et al., 2025)
The research paper, titled "Artificial Intelligence-based Tools for Next-Generation Seed Quality Analysis," is authored by a multidisciplinary team of experts. The authors include Sumeet Kumar Singh, Rashmi Jha, Saurabh Pandey, Chander Mohan, Chetna, Saipayan Ghosh, Satish Kumar Singh, Sarita Kumari, and Ashutosh Singh. They represent prestigious institutions in India ????, such as the Dr. Rajendra Prasad Central Agricultural University (RPCAU) in Bihar, Guru Nanak Dev University in Punjab, and the Ministry of Agriculture and Farmer Welfare, New Delhi.
Background of the Research
The research focuses on addressing critical challenges in modern agriculture, particularly the need for high-quality seeds to ensure optimal crop yields amidst growing food demand, climate change, and disrupted agricultural supply chains. Traditionally, seed quality assessment relies on manual, time-consuming, and error-prone methods, which struggle to meet the rising efficiency and precision requirements of the agricultural industry.
The paper explores the integration of Artificial Intelligence (AI) and non-destructive techniques like x-ray imaging, hyperspectral imaging, multispectral imaging, near-infrared (NIR) spectroscopy, and remote sensing to revolutionize seed quality evaluation. These innovative tools offer faster, more accurate, and cost-effective methods for assessing seed viability, vigor, germination, and health. The research underscores how advancements in machine learning, imaging technology, and spectral analysis are bridging the gap between traditional approaches and the modern demands of global agriculture.
With applications ranging from automated seed screening to detecting internal seed damage and grading seed quality, this study holds the potential to transform how seeds are inspected and distributed worldwide, ensuring better productivity and supporting global food security. The research is set against a backdrop of technological evolution in agriculture, leveraging big data, IoT, and AI innovations to streamline seed quality testing for both research and commercial use.
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Key Insights:
Why are these two research papers important to know about?
Focus of Research:
Accuracy Achievements:
Technological Approaches:
Applications and Scope:
Key Challenges Addressed:
While both studies enhance seed quality analysis, Kumar Singh et al., 2025 focuses on applying established AI tools to specific seed traits, whereas Zhou et al., 2025 offers a comprehensive approach by combining deep learning with advanced imaging technologies for diverse and large-scale seed phenotyping tasks.
Practical application of Deep Learning for Seed Quality Assurance
Check the online-based tool for Seed Quality Assurance (Soybean edition):
If you would like to customize this web tool for your seed QA needs for FREE, please, let us know - [email protected]
Calibrating Plate for Petiole Pro
Without the calibrating plate, you will only obtain the seed count.
With the calibrating plate, you can obtain:
You can download the calibration plate from Google Drive to print it using your own printer or purchase it directly from us.??
References
Hi
Attended Pir Mehr Ali Shah Arid Agriculture University Rawalpindi
1 个月Maryna Kuzmenko, Ph.D ???? Amazing Invension for coming future
Senior Digital Agribusiness Expert |Precision Agriculture | AI for Agriculture| UAV-based High-throughput Phenotyping for crop breeding| |ICT for Ag|
1 个月Dear Dr. Maryana, thank you for this interesting and very informative review and insights. We really need such technologies for Seed phenotyping and quality inspection and control. There is a seed system development strategy in Ethiopia and we can incorporate similar technologies for Seed quality assessment and tracking.
Head grower
1 个月Very informative and a truly remarkable breakthrough, thank you for this interesting post Maryna Kuzmenko